{
  "nbformat": 4,
  "nbformat_minor": 0,
  "metadata": {
    "colab": {
      "provenance": [],
      "authorship_tag": "ABX9TyN3+xAHobwmA3fOC1rPis5h",
      "include_colab_link": true
    },
    "kernelspec": {
      "name": "python3",
      "display_name": "Python 3"
    },
    "language_info": {
      "name": "python"
    }
  },
  "cells": [
    {
      "cell_type": "markdown",
      "metadata": {
        "id": "view-in-github",
        "colab_type": "text"
      },
      "source": [
        "<a href=\"https://colab.research.google.com/github/Courage-7/PandasAI-Project-For-EDA/blob/main/PandasAI_project_for_EDA%E2%9C%94.ipynb\" target=\"_parent\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
      ]
    },
    {
      "cell_type": "markdown",
      "source": [
        "\n",
        "# **PandasAI Agent Project**\n",
        "Generative AI can be integrated with Pandas, allowing you to chat with your dataset using just a single line of code.\n",
        "\n",
        "For this experiment, I will be using the ACLED datasets from my previous projects."
      ],
      "metadata": {
        "id": "PqW1PN9hWoF3"
      }
    },
    {
      "cell_type": "markdown",
      "source": [
        "\n",
        "AI agents can be integrated into various existing tools and products. With PandasAI, you can upload multiple dataframes or connect to SQL databases. Simply initialize an agent and ask questions in natural language. PandasAI simplifies querying your data using natural language, and now includes support for advanced agents, such as SemanticAgent and JudgeAgent, to ensure more reliable outputs."
      ],
      "metadata": {
        "id": "IECuFXBQTYiv"
      }
    },
    {
      "cell_type": "code",
      "source": [
        "from google.colab import drive\n",
        "drive.mount('/content/drive')"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "80uomdNlXRnm",
        "outputId": "c8325ebb-7fe5-4dea-97b9-fccb40f85eb3"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Drive already mounted at /content/drive; to attempt to forcibly remount, call drive.mount(\"/content/drive\", force_remount=True).\n"
          ]
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "# file path (/content/drive/MyDrive/ACLED/Africa_1997-2024_Oct04.csv )\n",
        "\n",
        "import pandas as pd\n",
        "\n",
        "# Assuming the file path is correct and the drive is mounted\n",
        "df = pd.read_csv('/content/drive/MyDrive/ACLED/Africa_1997-2024_Oct04.csv')\n"
      ],
      "metadata": {
        "id": "0Am2IN1_Xa02"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "df.sample(10)"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 1000
        },
        "id": "RBEitz7CX1xs",
        "outputId": "65c39c8b-c0f4-4fe6-db23-616fad5a200d"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "       event_id_cnty  event_date  year  time_precision  \\\n",
              "58829       SUD20724  2023-06-25  2023               2   \n",
              "145169      NIG20209  2021-03-22  2021               1   \n",
              "246074      NIG10566  2017-05-01  2017               1   \n",
              "91747        SEN1574  2022-08-29  2022               1   \n",
              "365480       UGA1346  2002-09-08  2002               1   \n",
              "259480       SSD2947  2016-07-12  2016               1   \n",
              "150640      NIG19596  2021-01-26  2021               1   \n",
              "61377       BUR11363  2023-06-03  2023               1   \n",
              "186207       NIR1141  2020-01-14  2020               1   \n",
              "14128       ETH12753  2024-06-08  2024               1   \n",
              "\n",
              "                 disorder_type                  event_type  \\\n",
              "58829       Political violence  Explosions/Remote violence   \n",
              "145169          Demonstrations                    Protests   \n",
              "246074      Political violence  Violence against civilians   \n",
              "91747           Demonstrations                    Protests   \n",
              "365480      Political violence                     Battles   \n",
              "259480      Political violence                     Battles   \n",
              "150640      Political violence  Violence against civilians   \n",
              "61377   Strategic developments      Strategic developments   \n",
              "186207      Political violence  Explosions/Remote violence   \n",
              "14128       Political violence  Violence against civilians   \n",
              "\n",
              "                           sub_event_type  \\\n",
              "58829                    Air/drone strike   \n",
              "145169                   Peaceful protest   \n",
              "246074                             Attack   \n",
              "91747                    Peaceful protest   \n",
              "365480                        Armed clash   \n",
              "259480                        Armed clash   \n",
              "150640                             Attack   \n",
              "61377                               Other   \n",
              "186207  Shelling/artillery/missile attack   \n",
              "14128                              Attack   \n",
              "\n",
              "                                                   actor1  \\\n",
              "58829                    Military Forces of Sudan (2019-)   \n",
              "145169                               Protesters (Nigeria)   \n",
              "246074  Islamic State (West Africa) and/or Boko Haram ...   \n",
              "91747                                Protesters (Senegal)   \n",
              "365480                         LRA: Lords Resistance Army   \n",
              "259480             Military Forces of South Sudan (2011-)   \n",
              "150640                 Unidentified Armed Group (Nigeria)   \n",
              "61377                    Police Forces of Burundi (2005-)   \n",
              "186207  Islamic State (West Africa) - Greater Sahara F...   \n",
              "14128                 Unidentified Armed Group (Ethiopia)   \n",
              "\n",
              "                                            assoc_actor_1             inter1  \\\n",
              "58829                                                 NaN       State forces   \n",
              "145169    Lawyers (Nigeria); NBA: Nigeria Bar Association         Protesters   \n",
              "246074                                                NaN        Rebel group   \n",
              "91747   PASTEF: Patriots of Senegal for Work, Ethics a...         Protesters   \n",
              "365480                                                NaN        Rebel group   \n",
              "259480                                                NaN       State forces   \n",
              "150640                                                NaN  Political militia   \n",
              "61377                                                 NaN       State forces   \n",
              "186207    Islamic State (West Africa) - Lake Chad Faction        Rebel group   \n",
              "14128                                                 NaN  Political militia   \n",
              "\n",
              "        ...            location latitude longitude geo_precision  \\\n",
              "58829   ...        Jebel Awinat  21.9913   25.0517             1   \n",
              "145169  ...                Awka   6.2101    7.0741             1   \n",
              "246074  ...              Lissam   7.1833   10.0333             2   \n",
              "91747   ...          Guediawaye  14.7745  -17.4021             1   \n",
              "365480  ...               Kilak   2.8411   32.1761             2   \n",
              "259480  ...                Lasu   3.9494   30.4659             1   \n",
              "150640  ...               Riyom   9.6333    8.7667             2   \n",
              "61377   ...             Ngagara  -3.3529   29.3704             1   \n",
              "186207  ...  Kongou Zarmagandey  13.5910    2.1794             2   \n",
              "14128   ...               Koshe   8.0151   38.5335             2   \n",
              "\n",
              "                       source             source_scale  \\\n",
              "58829                 Twitter                New media   \n",
              "145169         Daily Champion                 National   \n",
              "246074     This Day (Nigeria)                 National   \n",
              "91747                 WalfNet                 National   \n",
              "365480             AP; Xinhua            International   \n",
              "259480          Radio Tamazuj                 National   \n",
              "150640  Daily Trust (Nigeria)                 National   \n",
              "61377                   IWACU                 National   \n",
              "186207    Niger Tribune; Hoop           Other-National   \n",
              "14128       VOA; Wazema Radio  New media-International   \n",
              "\n",
              "                                                    notes fatalities  \\\n",
              "58829   Around 25 June 2023 (as reported), SAF conduct...          0   \n",
              "145169  On 22 March 2021, lawyers under the aegis of C...          0   \n",
              "246074  No fewer than 10 people have been killed by su...          1   \n",
              "91747   On 29 August 2022, supporters of PASTEF marche...          0   \n",
              "365480  LRA rebels attacked an army truck - at least 1...         10   \n",
              "259480  Unidentified gunmen attack a checkpoint in Las...          0   \n",
              "150640  On 26 January 2021, unidentified gunmen ambush...          3   \n",
              "61377   Other: On 3 June 2023, Police forces blocked t...          0   \n",
              "186207  On 14 January 2020, ISGS militants fired rocke...          0   \n",
              "14128   On 8 June 2024, unidentified gunmen attacked e...          4   \n",
              "\n",
              "                        tags   timestamp  \n",
              "58829                    NaN  1688421563  \n",
              "145169  crowd size=no report  1726526141  \n",
              "246074                   NaN  1702343677  \n",
              "91747   crowd size=no report  1663010292  \n",
              "365480                   NaN  1667868652  \n",
              "259480                   NaN  1680579870  \n",
              "150640                   NaN  1702343325  \n",
              "61377                    NaN  1686591341  \n",
              "186207                   NaN  1622068112  \n",
              "14128                    NaN  1727740315  \n",
              "\n",
              "[10 rows x 31 columns]"
            ],
            "text/html": [
              "\n",
              "  <div id=\"df-f43f63ed-703b-48fb-afb4-281ade734e78\" class=\"colab-df-container\">\n",
              "    <div>\n",
              "<style scoped>\n",
              "    .dataframe tbody tr th:only-of-type {\n",
              "        vertical-align: middle;\n",
              "    }\n",
              "\n",
              "    .dataframe tbody tr th {\n",
              "        vertical-align: top;\n",
              "    }\n",
              "\n",
              "    .dataframe thead th {\n",
              "        text-align: right;\n",
              "    }\n",
              "</style>\n",
              "<table border=\"1\" class=\"dataframe\">\n",
              "  <thead>\n",
              "    <tr style=\"text-align: right;\">\n",
              "      <th></th>\n",
              "      <th>event_id_cnty</th>\n",
              "      <th>event_date</th>\n",
              "      <th>year</th>\n",
              "      <th>time_precision</th>\n",
              "      <th>disorder_type</th>\n",
              "      <th>event_type</th>\n",
              "      <th>sub_event_type</th>\n",
              "      <th>actor1</th>\n",
              "      <th>assoc_actor_1</th>\n",
              "      <th>inter1</th>\n",
              "      <th>...</th>\n",
              "      <th>location</th>\n",
              "      <th>latitude</th>\n",
              "      <th>longitude</th>\n",
              "      <th>geo_precision</th>\n",
              "      <th>source</th>\n",
              "      <th>source_scale</th>\n",
              "      <th>notes</th>\n",
              "      <th>fatalities</th>\n",
              "      <th>tags</th>\n",
              "      <th>timestamp</th>\n",
              "    </tr>\n",
              "  </thead>\n",
              "  <tbody>\n",
              "    <tr>\n",
              "      <th>58829</th>\n",
              "      <td>SUD20724</td>\n",
              "      <td>2023-06-25</td>\n",
              "      <td>2023</td>\n",
              "      <td>2</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>Air/drone strike</td>\n",
              "      <td>Military Forces of Sudan (2019-)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>State forces</td>\n",
              "      <td>...</td>\n",
              "      <td>Jebel Awinat</td>\n",
              "      <td>21.9913</td>\n",
              "      <td>25.0517</td>\n",
              "      <td>1</td>\n",
              "      <td>Twitter</td>\n",
              "      <td>New media</td>\n",
              "      <td>Around 25 June 2023 (as reported), SAF conduct...</td>\n",
              "      <td>0</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1688421563</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>145169</th>\n",
              "      <td>NIG20209</td>\n",
              "      <td>2021-03-22</td>\n",
              "      <td>2021</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Peaceful protest</td>\n",
              "      <td>Protesters (Nigeria)</td>\n",
              "      <td>Lawyers (Nigeria); NBA: Nigeria Bar Association</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Awka</td>\n",
              "      <td>6.2101</td>\n",
              "      <td>7.0741</td>\n",
              "      <td>1</td>\n",
              "      <td>Daily Champion</td>\n",
              "      <td>National</td>\n",
              "      <td>On 22 March 2021, lawyers under the aegis of C...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=no report</td>\n",
              "      <td>1726526141</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>246074</th>\n",
              "      <td>NIG10566</td>\n",
              "      <td>2017-05-01</td>\n",
              "      <td>2017</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>Attack</td>\n",
              "      <td>Islamic State (West Africa) and/or Boko Haram ...</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Rebel group</td>\n",
              "      <td>...</td>\n",
              "      <td>Lissam</td>\n",
              "      <td>7.1833</td>\n",
              "      <td>10.0333</td>\n",
              "      <td>2</td>\n",
              "      <td>This Day (Nigeria)</td>\n",
              "      <td>National</td>\n",
              "      <td>No fewer than 10 people have been killed by su...</td>\n",
              "      <td>1</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1702343677</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>91747</th>\n",
              "      <td>SEN1574</td>\n",
              "      <td>2022-08-29</td>\n",
              "      <td>2022</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Peaceful protest</td>\n",
              "      <td>Protesters (Senegal)</td>\n",
              "      <td>PASTEF: Patriots of Senegal for Work, Ethics a...</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Guediawaye</td>\n",
              "      <td>14.7745</td>\n",
              "      <td>-17.4021</td>\n",
              "      <td>1</td>\n",
              "      <td>WalfNet</td>\n",
              "      <td>National</td>\n",
              "      <td>On 29 August 2022, supporters of PASTEF marche...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=no report</td>\n",
              "      <td>1663010292</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>365480</th>\n",
              "      <td>UGA1346</td>\n",
              "      <td>2002-09-08</td>\n",
              "      <td>2002</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Battles</td>\n",
              "      <td>Armed clash</td>\n",
              "      <td>LRA: Lords Resistance Army</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Rebel group</td>\n",
              "      <td>...</td>\n",
              "      <td>Kilak</td>\n",
              "      <td>2.8411</td>\n",
              "      <td>32.1761</td>\n",
              "      <td>2</td>\n",
              "      <td>AP; Xinhua</td>\n",
              "      <td>International</td>\n",
              "      <td>LRA rebels attacked an army truck - at least 1...</td>\n",
              "      <td>10</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1667868652</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>259480</th>\n",
              "      <td>SSD2947</td>\n",
              "      <td>2016-07-12</td>\n",
              "      <td>2016</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Battles</td>\n",
              "      <td>Armed clash</td>\n",
              "      <td>Military Forces of South Sudan (2011-)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>State forces</td>\n",
              "      <td>...</td>\n",
              "      <td>Lasu</td>\n",
              "      <td>3.9494</td>\n",
              "      <td>30.4659</td>\n",
              "      <td>1</td>\n",
              "      <td>Radio Tamazuj</td>\n",
              "      <td>National</td>\n",
              "      <td>Unidentified gunmen attack a checkpoint in Las...</td>\n",
              "      <td>0</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1680579870</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>150640</th>\n",
              "      <td>NIG19596</td>\n",
              "      <td>2021-01-26</td>\n",
              "      <td>2021</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>Attack</td>\n",
              "      <td>Unidentified Armed Group (Nigeria)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Political militia</td>\n",
              "      <td>...</td>\n",
              "      <td>Riyom</td>\n",
              "      <td>9.6333</td>\n",
              "      <td>8.7667</td>\n",
              "      <td>2</td>\n",
              "      <td>Daily Trust (Nigeria)</td>\n",
              "      <td>National</td>\n",
              "      <td>On 26 January 2021, unidentified gunmen ambush...</td>\n",
              "      <td>3</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1702343325</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>61377</th>\n",
              "      <td>BUR11363</td>\n",
              "      <td>2023-06-03</td>\n",
              "      <td>2023</td>\n",
              "      <td>1</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>Other</td>\n",
              "      <td>Police Forces of Burundi (2005-)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>State forces</td>\n",
              "      <td>...</td>\n",
              "      <td>Ngagara</td>\n",
              "      <td>-3.3529</td>\n",
              "      <td>29.3704</td>\n",
              "      <td>1</td>\n",
              "      <td>IWACU</td>\n",
              "      <td>National</td>\n",
              "      <td>Other: On 3 June 2023, Police forces blocked t...</td>\n",
              "      <td>0</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1686591341</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>186207</th>\n",
              "      <td>NIR1141</td>\n",
              "      <td>2020-01-14</td>\n",
              "      <td>2020</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>Shelling/artillery/missile attack</td>\n",
              "      <td>Islamic State (West Africa) - Greater Sahara F...</td>\n",
              "      <td>Islamic State (West Africa) - Lake Chad Faction</td>\n",
              "      <td>Rebel group</td>\n",
              "      <td>...</td>\n",
              "      <td>Kongou Zarmagandey</td>\n",
              "      <td>13.5910</td>\n",
              "      <td>2.1794</td>\n",
              "      <td>2</td>\n",
              "      <td>Niger Tribune; Hoop</td>\n",
              "      <td>Other-National</td>\n",
              "      <td>On 14 January 2020, ISGS militants fired rocke...</td>\n",
              "      <td>0</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1622068112</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>14128</th>\n",
              "      <td>ETH12753</td>\n",
              "      <td>2024-06-08</td>\n",
              "      <td>2024</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>Attack</td>\n",
              "      <td>Unidentified Armed Group (Ethiopia)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Political militia</td>\n",
              "      <td>...</td>\n",
              "      <td>Koshe</td>\n",
              "      <td>8.0151</td>\n",
              "      <td>38.5335</td>\n",
              "      <td>2</td>\n",
              "      <td>VOA; Wazema Radio</td>\n",
              "      <td>New media-International</td>\n",
              "      <td>On 8 June 2024, unidentified gunmen attacked e...</td>\n",
              "      <td>4</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1727740315</td>\n",
              "    </tr>\n",
              "  </tbody>\n",
              "</table>\n",
              "<p>10 rows × 31 columns</p>\n",
              "</div>\n",
              "    <div class=\"colab-df-buttons\">\n",
              "\n",
              "  <div class=\"colab-df-container\">\n",
              "    <button class=\"colab-df-convert\" onclick=\"convertToInteractive('df-f43f63ed-703b-48fb-afb4-281ade734e78')\"\n",
              "            title=\"Convert this dataframe to an interactive table.\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "  <svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\" viewBox=\"0 -960 960 960\">\n",
              "    <path d=\"M120-120v-720h720v720H120Zm60-500h600v-160H180v160Zm220 220h160v-160H400v160Zm0 220h160v-160H400v160ZM180-400h160v-160H180v160Zm440 0h160v-160H620v160ZM180-180h160v-160H180v160Zm440 0h160v-160H620v160Z\"/>\n",
              "  </svg>\n",
              "    </button>\n",
              "\n",
              "  <style>\n",
              "    .colab-df-container {\n",
              "      display:flex;\n",
              "      gap: 12px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert {\n",
              "      background-color: #E8F0FE;\n",
              "      border: none;\n",
              "      border-radius: 50%;\n",
              "      cursor: pointer;\n",
              "      display: none;\n",
              "      fill: #1967D2;\n",
              "      height: 32px;\n",
              "      padding: 0 0 0 0;\n",
              "      width: 32px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert:hover {\n",
              "      background-color: #E2EBFA;\n",
              "      box-shadow: 0px 1px 2px rgba(60, 64, 67, 0.3), 0px 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "      fill: #174EA6;\n",
              "    }\n",
              "\n",
              "    .colab-df-buttons div {\n",
              "      margin-bottom: 4px;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert {\n",
              "      background-color: #3B4455;\n",
              "      fill: #D2E3FC;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert:hover {\n",
              "      background-color: #434B5C;\n",
              "      box-shadow: 0px 1px 3px 1px rgba(0, 0, 0, 0.15);\n",
              "      filter: drop-shadow(0px 1px 2px rgba(0, 0, 0, 0.3));\n",
              "      fill: #FFFFFF;\n",
              "    }\n",
              "  </style>\n",
              "\n",
              "    <script>\n",
              "      const buttonEl =\n",
              "        document.querySelector('#df-f43f63ed-703b-48fb-afb4-281ade734e78 button.colab-df-convert');\n",
              "      buttonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "\n",
              "      async function convertToInteractive(key) {\n",
              "        const element = document.querySelector('#df-f43f63ed-703b-48fb-afb4-281ade734e78');\n",
              "        const dataTable =\n",
              "          await google.colab.kernel.invokeFunction('convertToInteractive',\n",
              "                                                    [key], {});\n",
              "        if (!dataTable) return;\n",
              "\n",
              "        const docLinkHtml = 'Like what you see? Visit the ' +\n",
              "          '<a target=\"_blank\" href=https://colab.research.google.com/notebooks/data_table.ipynb>data table notebook</a>'\n",
              "          + ' to learn more about interactive tables.';\n",
              "        element.innerHTML = '';\n",
              "        dataTable['output_type'] = 'display_data';\n",
              "        await google.colab.output.renderOutput(dataTable, element);\n",
              "        const docLink = document.createElement('div');\n",
              "        docLink.innerHTML = docLinkHtml;\n",
              "        element.appendChild(docLink);\n",
              "      }\n",
              "    </script>\n",
              "  </div>\n",
              "\n",
              "\n",
              "<div id=\"df-3240c0af-afcd-44fd-9751-bf7150583ff7\">\n",
              "  <button class=\"colab-df-quickchart\" onclick=\"quickchart('df-3240c0af-afcd-44fd-9751-bf7150583ff7')\"\n",
              "            title=\"Suggest charts\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "<svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\"viewBox=\"0 0 24 24\"\n",
              "     width=\"24px\">\n",
              "    <g>\n",
              "        <path d=\"M19 3H5c-1.1 0-2 .9-2 2v14c0 1.1.9 2 2 2h14c1.1 0 2-.9 2-2V5c0-1.1-.9-2-2-2zM9 17H7v-7h2v7zm4 0h-2V7h2v10zm4 0h-2v-4h2v4z\"/>\n",
              "    </g>\n",
              "</svg>\n",
              "  </button>\n",
              "\n",
              "<style>\n",
              "  .colab-df-quickchart {\n",
              "      --bg-color: #E8F0FE;\n",
              "      --fill-color: #1967D2;\n",
              "      --hover-bg-color: #E2EBFA;\n",
              "      --hover-fill-color: #174EA6;\n",
              "      --disabled-fill-color: #AAA;\n",
              "      --disabled-bg-color: #DDD;\n",
              "  }\n",
              "\n",
              "  [theme=dark] .colab-df-quickchart {\n",
              "      --bg-color: #3B4455;\n",
              "      --fill-color: #D2E3FC;\n",
              "      --hover-bg-color: #434B5C;\n",
              "      --hover-fill-color: #FFFFFF;\n",
              "      --disabled-bg-color: #3B4455;\n",
              "      --disabled-fill-color: #666;\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart {\n",
              "    background-color: var(--bg-color);\n",
              "    border: none;\n",
              "    border-radius: 50%;\n",
              "    cursor: pointer;\n",
              "    display: none;\n",
              "    fill: var(--fill-color);\n",
              "    height: 32px;\n",
              "    padding: 0;\n",
              "    width: 32px;\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart:hover {\n",
              "    background-color: var(--hover-bg-color);\n",
              "    box-shadow: 0 1px 2px rgba(60, 64, 67, 0.3), 0 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "    fill: var(--button-hover-fill-color);\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart-complete:disabled,\n",
              "  .colab-df-quickchart-complete:disabled:hover {\n",
              "    background-color: var(--disabled-bg-color);\n",
              "    fill: var(--disabled-fill-color);\n",
              "    box-shadow: none;\n",
              "  }\n",
              "\n",
              "  .colab-df-spinner {\n",
              "    border: 2px solid var(--fill-color);\n",
              "    border-color: transparent;\n",
              "    border-bottom-color: var(--fill-color);\n",
              "    animation:\n",
              "      spin 1s steps(1) infinite;\n",
              "  }\n",
              "\n",
              "  @keyframes spin {\n",
              "    0% {\n",
              "      border-color: transparent;\n",
              "      border-bottom-color: var(--fill-color);\n",
              "      border-left-color: var(--fill-color);\n",
              "    }\n",
              "    20% {\n",
              "      border-color: transparent;\n",
              "      border-left-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "    }\n",
              "    30% {\n",
              "      border-color: transparent;\n",
              "      border-left-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "      border-right-color: var(--fill-color);\n",
              "    }\n",
              "    40% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "    }\n",
              "    60% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "    }\n",
              "    80% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "      border-bottom-color: var(--fill-color);\n",
              "    }\n",
              "    90% {\n",
              "      border-color: transparent;\n",
              "      border-bottom-color: var(--fill-color);\n",
              "    }\n",
              "  }\n",
              "</style>\n",
              "\n",
              "  <script>\n",
              "    async function quickchart(key) {\n",
              "      const quickchartButtonEl =\n",
              "        document.querySelector('#' + key + ' button');\n",
              "      quickchartButtonEl.disabled = true;  // To prevent multiple clicks.\n",
              "      quickchartButtonEl.classList.add('colab-df-spinner');\n",
              "      try {\n",
              "        const charts = await google.colab.kernel.invokeFunction(\n",
              "            'suggestCharts', [key], {});\n",
              "      } catch (error) {\n",
              "        console.error('Error during call to suggestCharts:', error);\n",
              "      }\n",
              "      quickchartButtonEl.classList.remove('colab-df-spinner');\n",
              "      quickchartButtonEl.classList.add('colab-df-quickchart-complete');\n",
              "    }\n",
              "    (() => {\n",
              "      let quickchartButtonEl =\n",
              "        document.querySelector('#df-3240c0af-afcd-44fd-9751-bf7150583ff7 button');\n",
              "      quickchartButtonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "    })();\n",
              "  </script>\n",
              "</div>\n",
              "\n",
              "    </div>\n",
              "  </div>\n"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "dataframe"
            }
          },
          "metadata": {},
          "execution_count": 3
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "# import modules and libraries for this pandas ai project\n",
        "!pip install pandasai\n",
        "!pip install --upgrade pandasai # Upgrade pandasai to the latest version\n",
        "\n"
      ],
      "metadata": {
        "id": "cW-OUVp8YTMI",
        "outputId": "7700ed08-dedb-4d24-ac61-68cec0625d85",
        "colab": {
          "base_uri": "https://localhost:8080/"
        }
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "Requirement already satisfied: pandasai in /usr/local/lib/python3.10/dist-packages (2.3.0)\n",
            "Requirement already satisfied: astor<0.9.0,>=0.8.1 in /usr/local/lib/python3.10/dist-packages (from pandasai) (0.8.1)\n",
            "Requirement already satisfied: duckdb<2.0.0,>=1.0.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.1.2)\n",
            "Requirement already satisfied: faker<20.0.0,>=19.12.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (19.13.0)\n",
            "Requirement already satisfied: jinja2<4.0.0,>=3.1.3 in /usr/local/lib/python3.10/dist-packages (from pandasai) (3.1.4)\n",
            "Requirement already satisfied: matplotlib<4.0.0,>=3.7.1 in /usr/local/lib/python3.10/dist-packages (from pandasai) (3.8.0)\n",
            "Requirement already satisfied: openai<2 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.52.2)\n",
            "Requirement already satisfied: pandas==1.5.3 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.5.3)\n",
            "Requirement already satisfied: pillow<11.0.0,>=10.1.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (10.4.0)\n",
            "Requirement already satisfied: pydantic<3,>=1 in /usr/local/lib/python3.10/dist-packages (from pandasai) (2.9.2)\n",
            "Requirement already satisfied: python-dotenv<2.0.0,>=1.0.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.0.1)\n",
            "Requirement already satisfied: requests<3.0.0,>=2.31.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (2.32.3)\n",
            "Requirement already satisfied: scipy<2.0.0,>=1.9.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.13.1)\n",
            "Requirement already satisfied: sqlalchemy<3,>=1.4 in /usr/local/lib/python3.10/dist-packages (from pandasai) (2.0.36)\n",
            "Requirement already satisfied: sqlglot<26.0.0,>=25.0.3 in /usr/local/lib/python3.10/dist-packages (from sqlglot[rs]<26.0.0,>=25.0.3->pandasai) (25.1.0)\n",
            "Requirement already satisfied: python-dateutil>=2.8.1 in /usr/local/lib/python3.10/dist-packages (from pandas==1.5.3->pandasai) (2.8.2)\n",
            "Requirement already satisfied: pytz>=2020.1 in /usr/local/lib/python3.10/dist-packages (from pandas==1.5.3->pandasai) (2024.2)\n",
            "Requirement already satisfied: numpy>=1.21.0 in /usr/local/lib/python3.10/dist-packages (from pandas==1.5.3->pandasai) (1.26.4)\n",
            "Requirement already satisfied: MarkupSafe>=2.0 in /usr/local/lib/python3.10/dist-packages (from jinja2<4.0.0,>=3.1.3->pandasai) (3.0.2)\n",
            "Requirement already satisfied: contourpy>=1.0.1 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (1.3.0)\n",
            "Requirement already satisfied: cycler>=0.10 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (0.12.1)\n",
            "Requirement already satisfied: fonttools>=4.22.0 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (4.54.1)\n",
            "Requirement already satisfied: kiwisolver>=1.0.1 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (1.4.7)\n",
            "Requirement already satisfied: packaging>=20.0 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (24.1)\n",
            "Requirement already satisfied: pyparsing>=2.3.1 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (3.2.0)\n",
            "Requirement already satisfied: anyio<5,>=3.5.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (3.7.1)\n",
            "Requirement already satisfied: distro<2,>=1.7.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (1.9.0)\n",
            "Requirement already satisfied: httpx<1,>=0.23.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (0.27.2)\n",
            "Requirement already satisfied: jiter<1,>=0.4.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (0.6.1)\n",
            "Requirement already satisfied: sniffio in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (1.3.1)\n",
            "Requirement already satisfied: tqdm>4 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (4.66.6)\n",
            "Requirement already satisfied: typing-extensions<5,>=4.11 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (4.12.2)\n",
            "Requirement already satisfied: annotated-types>=0.6.0 in /usr/local/lib/python3.10/dist-packages (from pydantic<3,>=1->pandasai) (0.7.0)\n",
            "Requirement already satisfied: pydantic-core==2.23.4 in /usr/local/lib/python3.10/dist-packages (from pydantic<3,>=1->pandasai) (2.23.4)\n",
            "Requirement already satisfied: charset-normalizer<4,>=2 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (3.4.0)\n",
            "Requirement already satisfied: idna<4,>=2.5 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (3.10)\n",
            "Requirement already satisfied: urllib3<3,>=1.21.1 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (2.2.3)\n",
            "Requirement already satisfied: certifi>=2017.4.17 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (2024.8.30)\n",
            "Requirement already satisfied: greenlet!=0.4.17 in /usr/local/lib/python3.10/dist-packages (from sqlalchemy<3,>=1.4->pandasai) (3.1.1)\n",
            "Requirement already satisfied: sqlglotrs==0.2.6 in /usr/local/lib/python3.10/dist-packages (from sqlglot[rs]<26.0.0,>=25.0.3->pandasai) (0.2.6)\n",
            "Requirement already satisfied: exceptiongroup in /usr/local/lib/python3.10/dist-packages (from anyio<5,>=3.5.0->openai<2->pandasai) (1.2.2)\n",
            "Requirement already satisfied: httpcore==1.* in /usr/local/lib/python3.10/dist-packages (from httpx<1,>=0.23.0->openai<2->pandasai) (1.0.6)\n",
            "Requirement already satisfied: h11<0.15,>=0.13 in /usr/local/lib/python3.10/dist-packages (from httpcore==1.*->httpx<1,>=0.23.0->openai<2->pandasai) (0.14.0)\n",
            "Requirement already satisfied: six>=1.5 in /usr/local/lib/python3.10/dist-packages (from python-dateutil>=2.8.1->pandas==1.5.3->pandasai) (1.16.0)\n",
            "Requirement already satisfied: pandasai in /usr/local/lib/python3.10/dist-packages (2.3.0)\n",
            "Requirement already satisfied: astor<0.9.0,>=0.8.1 in /usr/local/lib/python3.10/dist-packages (from pandasai) (0.8.1)\n",
            "Requirement already satisfied: duckdb<2.0.0,>=1.0.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.1.2)\n",
            "Requirement already satisfied: faker<20.0.0,>=19.12.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (19.13.0)\n",
            "Requirement already satisfied: jinja2<4.0.0,>=3.1.3 in /usr/local/lib/python3.10/dist-packages (from pandasai) (3.1.4)\n",
            "Requirement already satisfied: matplotlib<4.0.0,>=3.7.1 in /usr/local/lib/python3.10/dist-packages (from pandasai) (3.8.0)\n",
            "Requirement already satisfied: openai<2 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.52.2)\n",
            "Requirement already satisfied: pandas==1.5.3 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.5.3)\n",
            "Requirement already satisfied: pillow<11.0.0,>=10.1.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (10.4.0)\n",
            "Requirement already satisfied: pydantic<3,>=1 in /usr/local/lib/python3.10/dist-packages (from pandasai) (2.9.2)\n",
            "Requirement already satisfied: python-dotenv<2.0.0,>=1.0.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.0.1)\n",
            "Requirement already satisfied: requests<3.0.0,>=2.31.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (2.32.3)\n",
            "Requirement already satisfied: scipy<2.0.0,>=1.9.0 in /usr/local/lib/python3.10/dist-packages (from pandasai) (1.13.1)\n",
            "Requirement already satisfied: sqlalchemy<3,>=1.4 in /usr/local/lib/python3.10/dist-packages (from pandasai) (2.0.36)\n",
            "Requirement already satisfied: sqlglot<26.0.0,>=25.0.3 in /usr/local/lib/python3.10/dist-packages (from sqlglot[rs]<26.0.0,>=25.0.3->pandasai) (25.1.0)\n",
            "Requirement already satisfied: python-dateutil>=2.8.1 in /usr/local/lib/python3.10/dist-packages (from pandas==1.5.3->pandasai) (2.8.2)\n",
            "Requirement already satisfied: pytz>=2020.1 in /usr/local/lib/python3.10/dist-packages (from pandas==1.5.3->pandasai) (2024.2)\n",
            "Requirement already satisfied: numpy>=1.21.0 in /usr/local/lib/python3.10/dist-packages (from pandas==1.5.3->pandasai) (1.26.4)\n",
            "Requirement already satisfied: MarkupSafe>=2.0 in /usr/local/lib/python3.10/dist-packages (from jinja2<4.0.0,>=3.1.3->pandasai) (3.0.2)\n",
            "Requirement already satisfied: contourpy>=1.0.1 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (1.3.0)\n",
            "Requirement already satisfied: cycler>=0.10 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (0.12.1)\n",
            "Requirement already satisfied: fonttools>=4.22.0 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (4.54.1)\n",
            "Requirement already satisfied: kiwisolver>=1.0.1 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (1.4.7)\n",
            "Requirement already satisfied: packaging>=20.0 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (24.1)\n",
            "Requirement already satisfied: pyparsing>=2.3.1 in /usr/local/lib/python3.10/dist-packages (from matplotlib<4.0.0,>=3.7.1->pandasai) (3.2.0)\n",
            "Requirement already satisfied: anyio<5,>=3.5.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (3.7.1)\n",
            "Requirement already satisfied: distro<2,>=1.7.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (1.9.0)\n",
            "Requirement already satisfied: httpx<1,>=0.23.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (0.27.2)\n",
            "Requirement already satisfied: jiter<1,>=0.4.0 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (0.6.1)\n",
            "Requirement already satisfied: sniffio in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (1.3.1)\n",
            "Requirement already satisfied: tqdm>4 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (4.66.6)\n",
            "Requirement already satisfied: typing-extensions<5,>=4.11 in /usr/local/lib/python3.10/dist-packages (from openai<2->pandasai) (4.12.2)\n",
            "Requirement already satisfied: annotated-types>=0.6.0 in /usr/local/lib/python3.10/dist-packages (from pydantic<3,>=1->pandasai) (0.7.0)\n",
            "Requirement already satisfied: pydantic-core==2.23.4 in /usr/local/lib/python3.10/dist-packages (from pydantic<3,>=1->pandasai) (2.23.4)\n",
            "Requirement already satisfied: charset-normalizer<4,>=2 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (3.4.0)\n",
            "Requirement already satisfied: idna<4,>=2.5 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (3.10)\n",
            "Requirement already satisfied: urllib3<3,>=1.21.1 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (2.2.3)\n",
            "Requirement already satisfied: certifi>=2017.4.17 in /usr/local/lib/python3.10/dist-packages (from requests<3.0.0,>=2.31.0->pandasai) (2024.8.30)\n",
            "Requirement already satisfied: greenlet!=0.4.17 in /usr/local/lib/python3.10/dist-packages (from sqlalchemy<3,>=1.4->pandasai) (3.1.1)\n",
            "Requirement already satisfied: sqlglotrs==0.2.6 in /usr/local/lib/python3.10/dist-packages (from sqlglot[rs]<26.0.0,>=25.0.3->pandasai) (0.2.6)\n",
            "Requirement already satisfied: exceptiongroup in /usr/local/lib/python3.10/dist-packages (from anyio<5,>=3.5.0->openai<2->pandasai) (1.2.2)\n",
            "Requirement already satisfied: httpcore==1.* in /usr/local/lib/python3.10/dist-packages (from httpx<1,>=0.23.0->openai<2->pandasai) (1.0.6)\n",
            "Requirement already satisfied: h11<0.15,>=0.13 in /usr/local/lib/python3.10/dist-packages (from httpcore==1.*->httpx<1,>=0.23.0->openai<2->pandasai) (0.14.0)\n",
            "Requirement already satisfied: six>=1.5 in /usr/local/lib/python3.10/dist-packages (from python-dateutil>=2.8.1->pandas==1.5.3->pandasai) (1.16.0)\n"
          ]
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "import os\n",
        "import pandas as pd\n",
        "#from pandasai import PandasAI\n",
        "from pandasai.agent.agent import Agent\n",
        "from pandasai.ee.agents.judge_agent import JudgeAgent\n",
        "from pandasai.ee.agents.semantic_agent import SemanticAgent\n",
        "\n"
      ],
      "metadata": {
        "id": "_YTPtVaHSTAn"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "APVHNB-9I72z"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "import os\n",
        "\n",
        "os.environ['PANDASAI_API_KEY'] = \"$2a$10$aGppytzi2WBO9KFkOBA2PuPglc.MvfWY1nGFCCC5pUH7QOSaTR2n.\""
      ],
      "metadata": {
        "id": "C4sOd67vpPck"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "from pandasai import SmartDataframe\n",
        "sdf = SmartDataframe(df)"
      ],
      "metadata": {
        "id": "Z8zXD4kfpPee"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [
        "sdf.chat(\"Return the top countries by even type, fatalities\")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 990
        },
        "id": "Ot8vNZ7vpPj0",
        "outputId": "f1f6ce8b-c4e5-49a8-dc93-8571d4944312"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "                          country                  event_type  fatalities\n",
              "6                          Angola                     Battles      115104\n",
              "275                         Sudan                     Battles       78393\n",
              "93                       Ethiopia                     Battles       57193\n",
              "215                       Nigeria                     Battles       51586\n",
              "257                       Somalia                     Battles       49282\n",
              "258                       Somalia  Explosions/Remote violence       20075\n",
              "216                       Nigeria  Explosions/Remote violence       17886\n",
              "276                         Sudan  Explosions/Remote violence       11189\n",
              "152                         Libya  Explosions/Remote violence        6846\n",
              "7                          Angola  Explosions/Remote violence        6383\n",
              "95                       Ethiopia                    Protests        1097\n",
              "153                         Libya                    Protests         850\n",
              "78                          Egypt                    Protests         623\n",
              "277                         Sudan                    Protests         514\n",
              "118                        Guinea                    Protests         279\n",
              "218                       Nigeria                       Riots        5002\n",
              "79                          Egypt                       Riots        2655\n",
              "67   Democratic Republic of Congo                       Riots        2606\n",
              "137                         Kenya                       Riots        2038\n",
              "266                  South Africa                       Riots        1655\n",
              "261                       Somalia      Strategic developments         285\n",
              "219                       Nigeria      Strategic developments         170\n",
              "85              Equatorial Guinea      Strategic developments         107\n",
              "80                          Egypt      Strategic developments          47\n",
              "138                         Kenya      Strategic developments          46\n",
              "220                       Nigeria  Violence against civilians       45380\n",
              "69   Democratic Republic of Congo  Violence against civilians       34394\n",
              "280                         Sudan  Violence against civilians       27285\n",
              "11                         Angola  Violence against civilians       22241\n",
              "274                   South Sudan  Violence against civilians       18342"
            ],
            "text/html": [
              "\n",
              "  <div id=\"df-15c16f4f-e39e-4e19-8a9b-0ccea0b98b19\" class=\"colab-df-container\">\n",
              "    <div>\n",
              "<style scoped>\n",
              "    .dataframe tbody tr th:only-of-type {\n",
              "        vertical-align: middle;\n",
              "    }\n",
              "\n",
              "    .dataframe tbody tr th {\n",
              "        vertical-align: top;\n",
              "    }\n",
              "\n",
              "    .dataframe thead th {\n",
              "        text-align: right;\n",
              "    }\n",
              "</style>\n",
              "<table border=\"1\" class=\"dataframe\">\n",
              "  <thead>\n",
              "    <tr style=\"text-align: right;\">\n",
              "      <th></th>\n",
              "      <th>country</th>\n",
              "      <th>event_type</th>\n",
              "      <th>fatalities</th>\n",
              "    </tr>\n",
              "  </thead>\n",
              "  <tbody>\n",
              "    <tr>\n",
              "      <th>6</th>\n",
              "      <td>Angola</td>\n",
              "      <td>Battles</td>\n",
              "      <td>115104</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>275</th>\n",
              "      <td>Sudan</td>\n",
              "      <td>Battles</td>\n",
              "      <td>78393</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>93</th>\n",
              "      <td>Ethiopia</td>\n",
              "      <td>Battles</td>\n",
              "      <td>57193</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>215</th>\n",
              "      <td>Nigeria</td>\n",
              "      <td>Battles</td>\n",
              "      <td>51586</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>257</th>\n",
              "      <td>Somalia</td>\n",
              "      <td>Battles</td>\n",
              "      <td>49282</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>258</th>\n",
              "      <td>Somalia</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>20075</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>216</th>\n",
              "      <td>Nigeria</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>17886</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>276</th>\n",
              "      <td>Sudan</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>11189</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>152</th>\n",
              "      <td>Libya</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>6846</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>7</th>\n",
              "      <td>Angola</td>\n",
              "      <td>Explosions/Remote violence</td>\n",
              "      <td>6383</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>95</th>\n",
              "      <td>Ethiopia</td>\n",
              "      <td>Protests</td>\n",
              "      <td>1097</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>153</th>\n",
              "      <td>Libya</td>\n",
              "      <td>Protests</td>\n",
              "      <td>850</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>78</th>\n",
              "      <td>Egypt</td>\n",
              "      <td>Protests</td>\n",
              "      <td>623</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>277</th>\n",
              "      <td>Sudan</td>\n",
              "      <td>Protests</td>\n",
              "      <td>514</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>118</th>\n",
              "      <td>Guinea</td>\n",
              "      <td>Protests</td>\n",
              "      <td>279</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>218</th>\n",
              "      <td>Nigeria</td>\n",
              "      <td>Riots</td>\n",
              "      <td>5002</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>79</th>\n",
              "      <td>Egypt</td>\n",
              "      <td>Riots</td>\n",
              "      <td>2655</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>67</th>\n",
              "      <td>Democratic Republic of Congo</td>\n",
              "      <td>Riots</td>\n",
              "      <td>2606</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>137</th>\n",
              "      <td>Kenya</td>\n",
              "      <td>Riots</td>\n",
              "      <td>2038</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>266</th>\n",
              "      <td>South Africa</td>\n",
              "      <td>Riots</td>\n",
              "      <td>1655</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>261</th>\n",
              "      <td>Somalia</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>285</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>219</th>\n",
              "      <td>Nigeria</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>170</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>85</th>\n",
              "      <td>Equatorial Guinea</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>107</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>80</th>\n",
              "      <td>Egypt</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>47</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>138</th>\n",
              "      <td>Kenya</td>\n",
              "      <td>Strategic developments</td>\n",
              "      <td>46</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>220</th>\n",
              "      <td>Nigeria</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>45380</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>69</th>\n",
              "      <td>Democratic Republic of Congo</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>34394</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>280</th>\n",
              "      <td>Sudan</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>27285</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>11</th>\n",
              "      <td>Angola</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>22241</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>274</th>\n",
              "      <td>South Sudan</td>\n",
              "      <td>Violence against civilians</td>\n",
              "      <td>18342</td>\n",
              "    </tr>\n",
              "  </tbody>\n",
              "</table>\n",
              "</div>\n",
              "    <div class=\"colab-df-buttons\">\n",
              "\n",
              "  <div class=\"colab-df-container\">\n",
              "    <button class=\"colab-df-convert\" onclick=\"convertToInteractive('df-15c16f4f-e39e-4e19-8a9b-0ccea0b98b19')\"\n",
              "            title=\"Convert this dataframe to an interactive table.\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "  <svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\" viewBox=\"0 -960 960 960\">\n",
              "    <path d=\"M120-120v-720h720v720H120Zm60-500h600v-160H180v160Zm220 220h160v-160H400v160Zm0 220h160v-160H400v160ZM180-400h160v-160H180v160Zm440 0h160v-160H620v160ZM180-180h160v-160H180v160Zm440 0h160v-160H620v160Z\"/>\n",
              "  </svg>\n",
              "    </button>\n",
              "\n",
              "  <style>\n",
              "    .colab-df-container {\n",
              "      display:flex;\n",
              "      gap: 12px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert {\n",
              "      background-color: #E8F0FE;\n",
              "      border: none;\n",
              "      border-radius: 50%;\n",
              "      cursor: pointer;\n",
              "      display: none;\n",
              "      fill: #1967D2;\n",
              "      height: 32px;\n",
              "      padding: 0 0 0 0;\n",
              "      width: 32px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert:hover {\n",
              "      background-color: #E2EBFA;\n",
              "      box-shadow: 0px 1px 2px rgba(60, 64, 67, 0.3), 0px 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "      fill: #174EA6;\n",
              "    }\n",
              "\n",
              "    .colab-df-buttons div {\n",
              "      margin-bottom: 4px;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert {\n",
              "      background-color: #3B4455;\n",
              "      fill: #D2E3FC;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert:hover {\n",
              "      background-color: #434B5C;\n",
              "      box-shadow: 0px 1px 3px 1px rgba(0, 0, 0, 0.15);\n",
              "      filter: drop-shadow(0px 1px 2px rgba(0, 0, 0, 0.3));\n",
              "      fill: #FFFFFF;\n",
              "    }\n",
              "  </style>\n",
              "\n",
              "    <script>\n",
              "      const buttonEl =\n",
              "        document.querySelector('#df-15c16f4f-e39e-4e19-8a9b-0ccea0b98b19 button.colab-df-convert');\n",
              "      buttonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "\n",
              "      async function convertToInteractive(key) {\n",
              "        const element = document.querySelector('#df-15c16f4f-e39e-4e19-8a9b-0ccea0b98b19');\n",
              "        const dataTable =\n",
              "          await google.colab.kernel.invokeFunction('convertToInteractive',\n",
              "                                                    [key], {});\n",
              "        if (!dataTable) return;\n",
              "\n",
              "        const docLinkHtml = 'Like what you see? Visit the ' +\n",
              "          '<a target=\"_blank\" href=https://colab.research.google.com/notebooks/data_table.ipynb>data table notebook</a>'\n",
              "          + ' to learn more about interactive tables.';\n",
              "        element.innerHTML = '';\n",
              "        dataTable['output_type'] = 'display_data';\n",
              "        await google.colab.output.renderOutput(dataTable, element);\n",
              "        const docLink = document.createElement('div');\n",
              "        docLink.innerHTML = docLinkHtml;\n",
              "        element.appendChild(docLink);\n",
              "      }\n",
              "    </script>\n",
              "  </div>\n",
              "\n",
              "\n",
              "<div id=\"df-d0566cfc-96de-4d10-a80e-e45a230ce957\">\n",
              "  <button class=\"colab-df-quickchart\" onclick=\"quickchart('df-d0566cfc-96de-4d10-a80e-e45a230ce957')\"\n",
              "            title=\"Suggest charts\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "<svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\"viewBox=\"0 0 24 24\"\n",
              "     width=\"24px\">\n",
              "    <g>\n",
              "        <path d=\"M19 3H5c-1.1 0-2 .9-2 2v14c0 1.1.9 2 2 2h14c1.1 0 2-.9 2-2V5c0-1.1-.9-2-2-2zM9 17H7v-7h2v7zm4 0h-2V7h2v10zm4 0h-2v-4h2v4z\"/>\n",
              "    </g>\n",
              "</svg>\n",
              "  </button>\n",
              "\n",
              "<style>\n",
              "  .colab-df-quickchart {\n",
              "      --bg-color: #E8F0FE;\n",
              "      --fill-color: #1967D2;\n",
              "      --hover-bg-color: #E2EBFA;\n",
              "      --hover-fill-color: #174EA6;\n",
              "      --disabled-fill-color: #AAA;\n",
              "      --disabled-bg-color: #DDD;\n",
              "  }\n",
              "\n",
              "  [theme=dark] .colab-df-quickchart {\n",
              "      --bg-color: #3B4455;\n",
              "      --fill-color: #D2E3FC;\n",
              "      --hover-bg-color: #434B5C;\n",
              "      --hover-fill-color: #FFFFFF;\n",
              "      --disabled-bg-color: #3B4455;\n",
              "      --disabled-fill-color: #666;\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart {\n",
              "    background-color: var(--bg-color);\n",
              "    border: none;\n",
              "    border-radius: 50%;\n",
              "    cursor: pointer;\n",
              "    display: none;\n",
              "    fill: var(--fill-color);\n",
              "    height: 32px;\n",
              "    padding: 0;\n",
              "    width: 32px;\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart:hover {\n",
              "    background-color: var(--hover-bg-color);\n",
              "    box-shadow: 0 1px 2px rgba(60, 64, 67, 0.3), 0 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "    fill: var(--button-hover-fill-color);\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart-complete:disabled,\n",
              "  .colab-df-quickchart-complete:disabled:hover {\n",
              "    background-color: var(--disabled-bg-color);\n",
              "    fill: var(--disabled-fill-color);\n",
              "    box-shadow: none;\n",
              "  }\n",
              "\n",
              "  .colab-df-spinner {\n",
              "    border: 2px solid var(--fill-color);\n",
              "    border-color: transparent;\n",
              "    border-bottom-color: var(--fill-color);\n",
              "    animation:\n",
              "      spin 1s steps(1) infinite;\n",
              "  }\n",
              "\n",
              "  @keyframes spin {\n",
              "    0% {\n",
              "      border-color: transparent;\n",
              "      border-bottom-color: var(--fill-color);\n",
              "      border-left-color: var(--fill-color);\n",
              "    }\n",
              "    20% {\n",
              "      border-color: transparent;\n",
              "      border-left-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "    }\n",
              "    30% {\n",
              "      border-color: transparent;\n",
              "      border-left-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "      border-right-color: var(--fill-color);\n",
              "    }\n",
              "    40% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "    }\n",
              "    60% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "    }\n",
              "    80% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "      border-bottom-color: var(--fill-color);\n",
              "    }\n",
              "    90% {\n",
              "      border-color: transparent;\n",
              "      border-bottom-color: var(--fill-color);\n",
              "    }\n",
              "  }\n",
              "</style>\n",
              "\n",
              "  <script>\n",
              "    async function quickchart(key) {\n",
              "      const quickchartButtonEl =\n",
              "        document.querySelector('#' + key + ' button');\n",
              "      quickchartButtonEl.disabled = true;  // To prevent multiple clicks.\n",
              "      quickchartButtonEl.classList.add('colab-df-spinner');\n",
              "      try {\n",
              "        const charts = await google.colab.kernel.invokeFunction(\n",
              "            'suggestCharts', [key], {});\n",
              "      } catch (error) {\n",
              "        console.error('Error during call to suggestCharts:', error);\n",
              "      }\n",
              "      quickchartButtonEl.classList.remove('colab-df-spinner');\n",
              "      quickchartButtonEl.classList.add('colab-df-quickchart-complete');\n",
              "    }\n",
              "    (() => {\n",
              "      let quickchartButtonEl =\n",
              "        document.querySelector('#df-d0566cfc-96de-4d10-a80e-e45a230ce957 button');\n",
              "      quickchartButtonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "    })();\n",
              "  </script>\n",
              "</div>\n",
              "\n",
              "    </div>\n",
              "  </div>\n"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "dataframe",
              "summary": "{\n  \"name\": \"sdf\",\n  \"rows\": 30,\n  \"fields\": [\n    {\n      \"column\": \"country\",\n      \"properties\": {\n        \"dtype\": \"category\",\n        \"num_unique_values\": 13,\n        \"samples\": [\n          \"Equatorial Guinea\",\n          \"Kenya\",\n          \"Angola\"\n        ],\n        \"semantic_type\": \"\",\n        \"description\": \"\"\n      }\n    },\n    {\n      \"column\": \"event_type\",\n      \"properties\": {\n        \"dtype\": \"category\",\n        \"num_unique_values\": 6,\n        \"samples\": [\n          \"Battles\",\n          \"Explosions/Remote violence\",\n          \"Violence against civilians\"\n        ],\n        \"semantic_type\": \"\",\n        \"description\": \"\"\n      }\n    },\n    {\n      \"column\": \"fatalities\",\n      \"properties\": {\n        \"dtype\": \"number\",\n        \"std\": 27768,\n        \"min\": 46,\n        \"max\": 115104,\n        \"num_unique_values\": 30,\n        \"samples\": [\n          27285,\n          5002,\n          47\n        ],\n        \"semantic_type\": \"\",\n        \"description\": \"\"\n      }\n    }\n  ]\n}"
            }
          },
          "metadata": {},
          "execution_count": 27
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "sdf.chat(\"Return a df of fatalities in Ghana, order by date\")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 1000
        },
        "id": "keKevTU9pPl_",
        "outputId": "61580231-30dc-48b7-ed54-c057b74ebfc9"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "       event_id_cnty  event_date  year  time_precision  \\\n",
              "387968          GHA1  1997-03-10  1997               1   \n",
              "385701          GHA2  1997-10-30  1997               1   \n",
              "385614          GHA3  1997-11-13  1997               1   \n",
              "385447          GHA4  1997-12-04  1997               1   \n",
              "385419          GHA5  1997-12-10  1997               1   \n",
              "...              ...         ...   ...             ...   \n",
              "441          GHA2356  2024-09-30  2024               1   \n",
              "319          GHA2357  2024-10-01  2024               1   \n",
              "211          GHA2353  2024-10-02  2024               1   \n",
              "117          GHA2355  2024-10-03  2024               1   \n",
              "11           GHA2358  2024-10-04  2024               1   \n",
              "\n",
              "                             disorder_type event_type  \\\n",
              "387968  Political violence; Demonstrations   Protests   \n",
              "385701                      Demonstrations      Riots   \n",
              "385614                  Political violence    Battles   \n",
              "385447                  Political violence    Battles   \n",
              "385419                  Political violence    Battles   \n",
              "...                                    ...        ...   \n",
              "441                         Demonstrations   Protests   \n",
              "319                         Demonstrations   Protests   \n",
              "211                     Political violence      Riots   \n",
              "117                         Demonstrations   Protests   \n",
              "11                          Demonstrations   Protests   \n",
              "\n",
              "                            sub_event_type                            actor1  \\\n",
              "387968  Excessive force against protesters                Protesters (Ghana)   \n",
              "385701               Violent demonstration                   Rioters (Ghana)   \n",
              "385614                         Armed clash  Unidentified Armed Group (Ghana)   \n",
              "385447                         Armed clash      Sunni Muslim Militia (Ghana)   \n",
              "385419                         Armed clash      Sunni Muslim Militia (Ghana)   \n",
              "...                                    ...                               ...   \n",
              "441                       Peaceful protest                Protesters (Ghana)   \n",
              "319                       Peaceful protest               Protesters (Uganda)   \n",
              "211                           Mob violence                   Rioters (Ghana)   \n",
              "117                       Peaceful protest                Protesters (Ghana)   \n",
              "11               Protest with intervention                Protesters (Ghana)   \n",
              "\n",
              "                   assoc_actor_1             inter1  ... location latitude  \\\n",
              "387968                       NaN         Protesters  ...   Kumasi   6.6936   \n",
              "385701                       NaN            Rioters  ...    Accra   5.5560   \n",
              "385614                       NaN  Political militia  ...  Akwatia   6.0500   \n",
              "385447                       NaN   Identity militia  ...   Tamale   9.4008   \n",
              "385419                       NaN   Identity militia  ...       Wa  10.0607   \n",
              "...                          ...                ...  ...      ...      ...   \n",
              "441                          NaN         Protesters  ...    Accra   5.5560   \n",
              "319             Teachers (Ghana)         Protesters  ...    Accra   5.5560   \n",
              "211     NPP: New Patriotic Party            Rioters  ...  Winneba   5.3436   \n",
              "117                          NaN         Protesters  ...    Accra   5.5560   \n",
              "11                           NaN         Protesters  ...    Accra   5.5560   \n",
              "\n",
              "       longitude geo_precision         source   source_scale  \\\n",
              "387968   -1.6218             1    Radio Accra       National   \n",
              "385701   -0.1969             1        Reuters  International   \n",
              "385614   -0.8000             1        Reuters  International   \n",
              "385447   -0.8393             1        Reuters  International   \n",
              "385419   -2.5019             1        Reuters  International   \n",
              "...          ...           ...            ...            ...   \n",
              "441      -0.1969             1      Citi News       National   \n",
              "319      -0.1969             1         3 News       National   \n",
              "211      -0.6230             1    GNA (Ghana)       National   \n",
              "117      -0.1969             1      Citi News       National   \n",
              "11       -0.1969             1  My Joy Online    Subnational   \n",
              "\n",
              "                                                    notes fatalities  \\\n",
              "387968  Protests over an electricity blackout at a mag...          2   \n",
              "385701  Riots over uncollected rubbish. Police shot an...          1   \n",
              "385614  Police fight unlicensed diamond traders. 1 tra...          1   \n",
              "385447  On 4 December 1997, Sunni Muslim Militia (Ghan...          1   \n",
              "385419            Clashes destroyed buildings town of Wa.          0   \n",
              "...                                                   ...        ...   \n",
              "441     On 30 September 2024, the chiefs and people of...          0   \n",
              "319     On 1 October 2024, hundreds of members of the ...          0   \n",
              "211     On 2 October 2024, a mob fight erupted between...          0   \n",
              "117     On 3 October 2024, for the first day of the #F...          0   \n",
              "11      On 4 October 2024, for the second day of the #...          0   \n",
              "\n",
              "                        tags   timestamp  \n",
              "387968                   NaN  1582579225  \n",
              "385701                   NaN  1582579225  \n",
              "385614                   NaN  1618530462  \n",
              "385447                   NaN  1669071217  \n",
              "385419                   NaN  1618530474  \n",
              "...                      ...         ...  \n",
              "441     crowd size=no report  1728335020  \n",
              "319      crowd size=hundreds  1728335020  \n",
              "211     crowd size=no report  1728335020  \n",
              "117     crowd size=no report  1728335020  \n",
              "11      crowd size=no report  1728335020  \n",
              "\n",
              "[2297 rows x 31 columns]"
            ],
            "text/html": [
              "\n",
              "  <div id=\"df-fb681394-8d14-46fd-9a6b-1d9b679c5a49\" class=\"colab-df-container\">\n",
              "    <div>\n",
              "<style scoped>\n",
              "    .dataframe tbody tr th:only-of-type {\n",
              "        vertical-align: middle;\n",
              "    }\n",
              "\n",
              "    .dataframe tbody tr th {\n",
              "        vertical-align: top;\n",
              "    }\n",
              "\n",
              "    .dataframe thead th {\n",
              "        text-align: right;\n",
              "    }\n",
              "</style>\n",
              "<table border=\"1\" class=\"dataframe\">\n",
              "  <thead>\n",
              "    <tr style=\"text-align: right;\">\n",
              "      <th></th>\n",
              "      <th>event_id_cnty</th>\n",
              "      <th>event_date</th>\n",
              "      <th>year</th>\n",
              "      <th>time_precision</th>\n",
              "      <th>disorder_type</th>\n",
              "      <th>event_type</th>\n",
              "      <th>sub_event_type</th>\n",
              "      <th>actor1</th>\n",
              "      <th>assoc_actor_1</th>\n",
              "      <th>inter1</th>\n",
              "      <th>...</th>\n",
              "      <th>location</th>\n",
              "      <th>latitude</th>\n",
              "      <th>longitude</th>\n",
              "      <th>geo_precision</th>\n",
              "      <th>source</th>\n",
              "      <th>source_scale</th>\n",
              "      <th>notes</th>\n",
              "      <th>fatalities</th>\n",
              "      <th>tags</th>\n",
              "      <th>timestamp</th>\n",
              "    </tr>\n",
              "  </thead>\n",
              "  <tbody>\n",
              "    <tr>\n",
              "      <th>387968</th>\n",
              "      <td>GHA1</td>\n",
              "      <td>1997-03-10</td>\n",
              "      <td>1997</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence; Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Excessive force against protesters</td>\n",
              "      <td>Protesters (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Kumasi</td>\n",
              "      <td>6.6936</td>\n",
              "      <td>-1.6218</td>\n",
              "      <td>1</td>\n",
              "      <td>Radio Accra</td>\n",
              "      <td>National</td>\n",
              "      <td>Protests over an electricity blackout at a mag...</td>\n",
              "      <td>2</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1582579225</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>385701</th>\n",
              "      <td>GHA2</td>\n",
              "      <td>1997-10-30</td>\n",
              "      <td>1997</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Riots</td>\n",
              "      <td>Violent demonstration</td>\n",
              "      <td>Rioters (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Rioters</td>\n",
              "      <td>...</td>\n",
              "      <td>Accra</td>\n",
              "      <td>5.5560</td>\n",
              "      <td>-0.1969</td>\n",
              "      <td>1</td>\n",
              "      <td>Reuters</td>\n",
              "      <td>International</td>\n",
              "      <td>Riots over uncollected rubbish. Police shot an...</td>\n",
              "      <td>1</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1582579225</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>385614</th>\n",
              "      <td>GHA3</td>\n",
              "      <td>1997-11-13</td>\n",
              "      <td>1997</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Battles</td>\n",
              "      <td>Armed clash</td>\n",
              "      <td>Unidentified Armed Group (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Political militia</td>\n",
              "      <td>...</td>\n",
              "      <td>Akwatia</td>\n",
              "      <td>6.0500</td>\n",
              "      <td>-0.8000</td>\n",
              "      <td>1</td>\n",
              "      <td>Reuters</td>\n",
              "      <td>International</td>\n",
              "      <td>Police fight unlicensed diamond traders. 1 tra...</td>\n",
              "      <td>1</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1618530462</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>385447</th>\n",
              "      <td>GHA4</td>\n",
              "      <td>1997-12-04</td>\n",
              "      <td>1997</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Battles</td>\n",
              "      <td>Armed clash</td>\n",
              "      <td>Sunni Muslim Militia (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Identity militia</td>\n",
              "      <td>...</td>\n",
              "      <td>Tamale</td>\n",
              "      <td>9.4008</td>\n",
              "      <td>-0.8393</td>\n",
              "      <td>1</td>\n",
              "      <td>Reuters</td>\n",
              "      <td>International</td>\n",
              "      <td>On 4 December 1997, Sunni Muslim Militia (Ghan...</td>\n",
              "      <td>1</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1669071217</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>385419</th>\n",
              "      <td>GHA5</td>\n",
              "      <td>1997-12-10</td>\n",
              "      <td>1997</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Battles</td>\n",
              "      <td>Armed clash</td>\n",
              "      <td>Sunni Muslim Militia (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Identity militia</td>\n",
              "      <td>...</td>\n",
              "      <td>Wa</td>\n",
              "      <td>10.0607</td>\n",
              "      <td>-2.5019</td>\n",
              "      <td>1</td>\n",
              "      <td>Reuters</td>\n",
              "      <td>International</td>\n",
              "      <td>Clashes destroyed buildings town of Wa.</td>\n",
              "      <td>0</td>\n",
              "      <td>NaN</td>\n",
              "      <td>1618530474</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>...</th>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "      <td>...</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>441</th>\n",
              "      <td>GHA2356</td>\n",
              "      <td>2024-09-30</td>\n",
              "      <td>2024</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Peaceful protest</td>\n",
              "      <td>Protesters (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Accra</td>\n",
              "      <td>5.5560</td>\n",
              "      <td>-0.1969</td>\n",
              "      <td>1</td>\n",
              "      <td>Citi News</td>\n",
              "      <td>National</td>\n",
              "      <td>On 30 September 2024, the chiefs and people of...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=no report</td>\n",
              "      <td>1728335020</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>319</th>\n",
              "      <td>GHA2357</td>\n",
              "      <td>2024-10-01</td>\n",
              "      <td>2024</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Peaceful protest</td>\n",
              "      <td>Protesters (Uganda)</td>\n",
              "      <td>Teachers (Ghana)</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Accra</td>\n",
              "      <td>5.5560</td>\n",
              "      <td>-0.1969</td>\n",
              "      <td>1</td>\n",
              "      <td>3 News</td>\n",
              "      <td>National</td>\n",
              "      <td>On 1 October 2024, hundreds of members of the ...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=hundreds</td>\n",
              "      <td>1728335020</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>211</th>\n",
              "      <td>GHA2353</td>\n",
              "      <td>2024-10-02</td>\n",
              "      <td>2024</td>\n",
              "      <td>1</td>\n",
              "      <td>Political violence</td>\n",
              "      <td>Riots</td>\n",
              "      <td>Mob violence</td>\n",
              "      <td>Rioters (Ghana)</td>\n",
              "      <td>NPP: New Patriotic Party</td>\n",
              "      <td>Rioters</td>\n",
              "      <td>...</td>\n",
              "      <td>Winneba</td>\n",
              "      <td>5.3436</td>\n",
              "      <td>-0.6230</td>\n",
              "      <td>1</td>\n",
              "      <td>GNA (Ghana)</td>\n",
              "      <td>National</td>\n",
              "      <td>On 2 October 2024, a mob fight erupted between...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=no report</td>\n",
              "      <td>1728335020</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>117</th>\n",
              "      <td>GHA2355</td>\n",
              "      <td>2024-10-03</td>\n",
              "      <td>2024</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Peaceful protest</td>\n",
              "      <td>Protesters (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Accra</td>\n",
              "      <td>5.5560</td>\n",
              "      <td>-0.1969</td>\n",
              "      <td>1</td>\n",
              "      <td>Citi News</td>\n",
              "      <td>National</td>\n",
              "      <td>On 3 October 2024, for the first day of the #F...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=no report</td>\n",
              "      <td>1728335020</td>\n",
              "    </tr>\n",
              "    <tr>\n",
              "      <th>11</th>\n",
              "      <td>GHA2358</td>\n",
              "      <td>2024-10-04</td>\n",
              "      <td>2024</td>\n",
              "      <td>1</td>\n",
              "      <td>Demonstrations</td>\n",
              "      <td>Protests</td>\n",
              "      <td>Protest with intervention</td>\n",
              "      <td>Protesters (Ghana)</td>\n",
              "      <td>NaN</td>\n",
              "      <td>Protesters</td>\n",
              "      <td>...</td>\n",
              "      <td>Accra</td>\n",
              "      <td>5.5560</td>\n",
              "      <td>-0.1969</td>\n",
              "      <td>1</td>\n",
              "      <td>My Joy Online</td>\n",
              "      <td>Subnational</td>\n",
              "      <td>On 4 October 2024, for the second day of the #...</td>\n",
              "      <td>0</td>\n",
              "      <td>crowd size=no report</td>\n",
              "      <td>1728335020</td>\n",
              "    </tr>\n",
              "  </tbody>\n",
              "</table>\n",
              "<p>2297 rows × 31 columns</p>\n",
              "</div>\n",
              "    <div class=\"colab-df-buttons\">\n",
              "\n",
              "  <div class=\"colab-df-container\">\n",
              "    <button class=\"colab-df-convert\" onclick=\"convertToInteractive('df-fb681394-8d14-46fd-9a6b-1d9b679c5a49')\"\n",
              "            title=\"Convert this dataframe to an interactive table.\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "  <svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\" viewBox=\"0 -960 960 960\">\n",
              "    <path d=\"M120-120v-720h720v720H120Zm60-500h600v-160H180v160Zm220 220h160v-160H400v160Zm0 220h160v-160H400v160ZM180-400h160v-160H180v160Zm440 0h160v-160H620v160ZM180-180h160v-160H180v160Zm440 0h160v-160H620v160Z\"/>\n",
              "  </svg>\n",
              "    </button>\n",
              "\n",
              "  <style>\n",
              "    .colab-df-container {\n",
              "      display:flex;\n",
              "      gap: 12px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert {\n",
              "      background-color: #E8F0FE;\n",
              "      border: none;\n",
              "      border-radius: 50%;\n",
              "      cursor: pointer;\n",
              "      display: none;\n",
              "      fill: #1967D2;\n",
              "      height: 32px;\n",
              "      padding: 0 0 0 0;\n",
              "      width: 32px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert:hover {\n",
              "      background-color: #E2EBFA;\n",
              "      box-shadow: 0px 1px 2px rgba(60, 64, 67, 0.3), 0px 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "      fill: #174EA6;\n",
              "    }\n",
              "\n",
              "    .colab-df-buttons div {\n",
              "      margin-bottom: 4px;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert {\n",
              "      background-color: #3B4455;\n",
              "      fill: #D2E3FC;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert:hover {\n",
              "      background-color: #434B5C;\n",
              "      box-shadow: 0px 1px 3px 1px rgba(0, 0, 0, 0.15);\n",
              "      filter: drop-shadow(0px 1px 2px rgba(0, 0, 0, 0.3));\n",
              "      fill: #FFFFFF;\n",
              "    }\n",
              "  </style>\n",
              "\n",
              "    <script>\n",
              "      const buttonEl =\n",
              "        document.querySelector('#df-fb681394-8d14-46fd-9a6b-1d9b679c5a49 button.colab-df-convert');\n",
              "      buttonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "\n",
              "      async function convertToInteractive(key) {\n",
              "        const element = document.querySelector('#df-fb681394-8d14-46fd-9a6b-1d9b679c5a49');\n",
              "        const dataTable =\n",
              "          await google.colab.kernel.invokeFunction('convertToInteractive',\n",
              "                                                    [key], {});\n",
              "        if (!dataTable) return;\n",
              "\n",
              "        const docLinkHtml = 'Like what you see? Visit the ' +\n",
              "          '<a target=\"_blank\" href=https://colab.research.google.com/notebooks/data_table.ipynb>data table notebook</a>'\n",
              "          + ' to learn more about interactive tables.';\n",
              "        element.innerHTML = '';\n",
              "        dataTable['output_type'] = 'display_data';\n",
              "        await google.colab.output.renderOutput(dataTable, element);\n",
              "        const docLink = document.createElement('div');\n",
              "        docLink.innerHTML = docLinkHtml;\n",
              "        element.appendChild(docLink);\n",
              "      }\n",
              "    </script>\n",
              "  </div>\n",
              "\n",
              "\n",
              "<div id=\"df-fc614966-0f61-483e-bd37-4424e4e6ba5d\">\n",
              "  <button class=\"colab-df-quickchart\" onclick=\"quickchart('df-fc614966-0f61-483e-bd37-4424e4e6ba5d')\"\n",
              "            title=\"Suggest charts\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "<svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\"viewBox=\"0 0 24 24\"\n",
              "     width=\"24px\">\n",
              "    <g>\n",
              "        <path d=\"M19 3H5c-1.1 0-2 .9-2 2v14c0 1.1.9 2 2 2h14c1.1 0 2-.9 2-2V5c0-1.1-.9-2-2-2zM9 17H7v-7h2v7zm4 0h-2V7h2v10zm4 0h-2v-4h2v4z\"/>\n",
              "    </g>\n",
              "</svg>\n",
              "  </button>\n",
              "\n",
              "<style>\n",
              "  .colab-df-quickchart {\n",
              "      --bg-color: #E8F0FE;\n",
              "      --fill-color: #1967D2;\n",
              "      --hover-bg-color: #E2EBFA;\n",
              "      --hover-fill-color: #174EA6;\n",
              "      --disabled-fill-color: #AAA;\n",
              "      --disabled-bg-color: #DDD;\n",
              "  }\n",
              "\n",
              "  [theme=dark] .colab-df-quickchart {\n",
              "      --bg-color: #3B4455;\n",
              "      --fill-color: #D2E3FC;\n",
              "      --hover-bg-color: #434B5C;\n",
              "      --hover-fill-color: #FFFFFF;\n",
              "      --disabled-bg-color: #3B4455;\n",
              "      --disabled-fill-color: #666;\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart {\n",
              "    background-color: var(--bg-color);\n",
              "    border: none;\n",
              "    border-radius: 50%;\n",
              "    cursor: pointer;\n",
              "    display: none;\n",
              "    fill: var(--fill-color);\n",
              "    height: 32px;\n",
              "    padding: 0;\n",
              "    width: 32px;\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart:hover {\n",
              "    background-color: var(--hover-bg-color);\n",
              "    box-shadow: 0 1px 2px rgba(60, 64, 67, 0.3), 0 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "    fill: var(--button-hover-fill-color);\n",
              "  }\n",
              "\n",
              "  .colab-df-quickchart-complete:disabled,\n",
              "  .colab-df-quickchart-complete:disabled:hover {\n",
              "    background-color: var(--disabled-bg-color);\n",
              "    fill: var(--disabled-fill-color);\n",
              "    box-shadow: none;\n",
              "  }\n",
              "\n",
              "  .colab-df-spinner {\n",
              "    border: 2px solid var(--fill-color);\n",
              "    border-color: transparent;\n",
              "    border-bottom-color: var(--fill-color);\n",
              "    animation:\n",
              "      spin 1s steps(1) infinite;\n",
              "  }\n",
              "\n",
              "  @keyframes spin {\n",
              "    0% {\n",
              "      border-color: transparent;\n",
              "      border-bottom-color: var(--fill-color);\n",
              "      border-left-color: var(--fill-color);\n",
              "    }\n",
              "    20% {\n",
              "      border-color: transparent;\n",
              "      border-left-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "    }\n",
              "    30% {\n",
              "      border-color: transparent;\n",
              "      border-left-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "      border-right-color: var(--fill-color);\n",
              "    }\n",
              "    40% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "      border-top-color: var(--fill-color);\n",
              "    }\n",
              "    60% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "    }\n",
              "    80% {\n",
              "      border-color: transparent;\n",
              "      border-right-color: var(--fill-color);\n",
              "      border-bottom-color: var(--fill-color);\n",
              "    }\n",
              "    90% {\n",
              "      border-color: transparent;\n",
              "      border-bottom-color: var(--fill-color);\n",
              "    }\n",
              "  }\n",
              "</style>\n",
              "\n",
              "  <script>\n",
              "    async function quickchart(key) {\n",
              "      const quickchartButtonEl =\n",
              "        document.querySelector('#' + key + ' button');\n",
              "      quickchartButtonEl.disabled = true;  // To prevent multiple clicks.\n",
              "      quickchartButtonEl.classList.add('colab-df-spinner');\n",
              "      try {\n",
              "        const charts = await google.colab.kernel.invokeFunction(\n",
              "            'suggestCharts', [key], {});\n",
              "      } catch (error) {\n",
              "        console.error('Error during call to suggestCharts:', error);\n",
              "      }\n",
              "      quickchartButtonEl.classList.remove('colab-df-spinner');\n",
              "      quickchartButtonEl.classList.add('colab-df-quickchart-complete');\n",
              "    }\n",
              "    (() => {\n",
              "      let quickchartButtonEl =\n",
              "        document.querySelector('#df-fc614966-0f61-483e-bd37-4424e4e6ba5d button');\n",
              "      quickchartButtonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "    })();\n",
              "  </script>\n",
              "</div>\n",
              "\n",
              "    </div>\n",
              "  </div>\n"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "dataframe"
            }
          },
          "metadata": {},
          "execution_count": 17
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "print(sdf.last_code_generated)"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/"
        },
        "id": "tOSqEh4rpPpv",
        "outputId": "d1911568-9f53-4326-ecef-7b8d55e06ab3"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "ghana_fatalities = dfs[0][dfs[0]['country'] == 'Ghana']\n",
            "ghana_fatalities_sorted = ghana_fatalities.sort_values(by='event_date')\n",
            "result = {'type': 'dataframe', 'value': ghana_fatalities_sorted}\n"
          ]
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "sdf.chat(\"Return two annotated pie charts to display the distribution or percentage of event types and disorder types\")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 397
        },
        "id": "C-sxcBzYpPu6",
        "outputId": "568cc25c-e8f9-4eab-a6c9-691665ce09e2"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "'/content/exports/charts/temp_chart.png'"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "string"
            }
          },
          "metadata": {},
          "execution_count": 23
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "<Figure size 1400x700 with 2 Axes>"
            ],
            "image/png": "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\n"
          },
          "metadata": {}
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "sdf.chat(\"Return a 'bump chart' to show the rank of the event type categories over the years\")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 536
        },
        "id": "W5LqmZq9pPx8",
        "outputId": "8fc9b275-c7e3-4c02-8ac6-15fe567c413f"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "'/content/exports/charts/temp_chart.png'"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "string"
            }
          },
          "metadata": {},
          "execution_count": 22
        },
        {
          "output_type": "display_data",
          "data": {
            "text/plain": [
              "<Figure size 1200x800 with 1 Axes>"
            ],
            "image/png": "iVBORw0KGgoAAAANSUhEUgAABKAAAAMWCAYAAADGbf5aAAAAOXRFWHRTb2Z0d2FyZQBNYXRwbG90bGliIHZlcnNpb24zLjguMCwgaHR0cHM6Ly9tYXRwbG90bGliLm9yZy81sbWrAAAACXBIWXMAAA9hAAAPYQGoP6dpAAEAAElEQVR4nOzdd3hURRfA4d/upncS0gghhR46oUjvJDTpRVAIAjawYwELoAIiKGJDESUiSK+CUqWDEEroJUBCTSWk9937/bFkYUnbQALqd16ffWDnzp2ZezeL3MPMGZWiKApCCCGEEEIIIYQQQpQT9eMegBBCCCGEEEIIIYT4b5MAlBBCCCGEEEIIIYQoVxKAEkIIIYQQQgghhBDlSgJQQgghhBBCCCGEEKJcSQBKCCGEEEIIIYQQQpQrCUAJIYQQQgghhBBCiHIlASghhBBCCCGEEEIIUa4kACWEEEIIIYQQQgghypUEoIQQQgghhBBCCCFEuZIAlBDiPyskJAQ7O7ty7ycsLIyWLVtia2uLSqUiPDy83PsU4kFFRUWhUqkIDQ193EP513pUf7YIIYQQQvyXSABKCFFuQkNDUalUhpeZmRleXl6EhIRw48aNxz28MpGbm8vAgQNJTExk9uzZ/Prrr/j4+BRad+fOnUb34/7X0qVLH/HoCzpz5gyTJ08mKiqq2Hr5QQxTXiW19ahlZWUxe/ZsmjdvjqOjI1ZWVtSoUYNx48Zx4cKFUre3f/9+Jk+eTFJSUtkP9j/m6tWrvPDCC/j6+mJpaYmbmxt9+vRh3759j3toBWRkZDB58mR27tz5yPvOzc2lXr16VK1alczMzALHo6KisLGxYeDAgY98bEIIIYQQD8rscQ9ACPHf99FHH+Hn50dWVhZ///03oaGh7N27l1OnTmFlZfW4h/dQLl26xJUrV/jxxx8ZPXq0See88sorNG3atEB5ixYtynp4pXbmzBmmTJlC+/bt8fX1LbKeq6srv/76q1HZ559/zvXr15k9e3aBuv8UCQkJBAcHc+TIEXr27MnQoUOxs7Pj/PnzLF26lHnz5pGTk1OqNvfv38+UKVMICQnBycmpfAZehnx8fMjMzMTc3PyR9rtv3z66d+8OwOjRowkICCAmJobQ0FDatGnDnDlzePnllx/pmIqTkZHBlClTAGjfvv0j7dvc3Jx58+bRqlUrPv74Y6ZNm2Z0fNy4cVhYWPDVV1890nEJIYQQQjwMCUAJIcpdt27daNKkCaB/8KxYsSIzZsxg/fr1DBo06DGP7uHExcUBlCrw0KZNGwYMGFBOI3o0bG1tefrpp43Kli5dyu3btwuU/5OEhIRw7NgxVq5cSf/+/Y2Offzxx7z33nuPaWTlLy8vD51Oh4WFxSMP/N6+fZsBAwZgbW3Nvn37qFq1quHYG2+8QVBQEK+99hqBgYG0bNnykY0rKysLCwsL1Op/3oTwFi1a8MILLzBr1iyGDRtGnTp1AFi1ahUbN27ku+++w9PTs9zHkZ6ejq2tbbn3I4QQQoj/vn/e37iEEP95bdq0AfSzh/Ll5OTw4YcfEhgYiKOjI7a2trRp04YdO3YYnZu/9GvWrFnMmzePqlWrYmlpSdOmTQkLCyux7/DwcFxdXWnfvj1paWnF1v3rr79o06YNtra2ODk50bt3b86ePWs4HhISQrt27QAYOHAgKpWqTGZK1K1blw4dOhQo1+l0eHl5GQWvdDodX375JXXq1MHKygp3d3eef/55bt++bXSur68vPXv2ZO/evTRr1gwrKyv8/f1ZuHChoU5oaKhhSU+HDh0MS+gedAlSu3btaNCgQaHHatasSVBQEGD8mc6ePRsfHx+sra1p164dp06dKnDuuXPnGDBgAM7OzlhZWdGkSRPWr19f4ngOHjzIxo0bGTVqVIHgE4ClpSWzZs0yvD9x4gQhISH4+/tjZWWFh4cHzz77LLdu3TLUmTx5Mm+99RYAfn5+hS47XLRoEYGBgVhbW+Ps7MyQIUO4du1agf6//fZb/P39sba2plmzZuzZs4f27dsX+JmKi4tj1KhRuLu7Y2VlRYMGDfjll1+M6tx7T7/88kvD9+TMmTNF5oAy5b7m5uYyZcoUqlevjpWVFS4uLrRu3ZqtW7cWe+9/+OEHYmJimDlzplHwCcDa2ppffvkFlUrFRx99BMDhw4dRqVQFrgtg8+bNqFQqNmzYYCi7ceMGzz77LO7u7lhaWlKnTh1+/vlno/Pyl8AuXbqU999/Hy8vL2xsbEhJSSnQR1RUlGHm3pQpUwyf6+TJk43q3bhxgz59+mBnZ4erqyvjx49Hq9Ua1TH1O1qY6dOnU7FiRV544QUURSEtLY3XXnvNEJwC/c91cHAwjo6O2NjY0K5duwJLGq9cucJLL71EzZo1sba2xsXFhYEDBxZYHpu/bHrXrl289NJLuLm5UblyZQBSU1N57bXXjJZPdunShaNHj5Z4HUIIIYQQIDOghBCPQf5DT4UKFQxlKSkpzJ8/n6eeeooxY8aQmprKTz/9RFBQEIcOHaJhw4ZGbfz222+kpqby/PPPo1Kp+Oyzz+jXrx+XL18ucmlRWFgYQUFBNGnShHXr1mFtbV3kGLdt20a3bt3w9/dn8uTJZGZm8vXXX9OqVSuOHj2Kr68vzz//PF5eXkybNs2wrM7d3b3E609NTSUhIaFAuYuLCyqVisGDBzN58mRiYmLw8PAwHN+7dy83b95kyJAhhrLnn3+e0NBQRo4cySuvvEJkZCTffPMNx44dY9++fUb34uLFiwwYMIBRo0YxYsQIfv75Z0JCQggMDKROnTq0bduWV155ha+++oqJEydSu3ZtAMOvpfXMM88wZswYTp06Rd26dQ3lYWFhXLhwgffff9+o/sKFC0lNTWXs2LFkZWUxZ84cOnbsyMmTJw339fTp07Rq1QovLy/effddbG1tWb58OX369GHVqlX07du3yPHkB1OeeeYZk8a/detWLl++zMiRI/Hw8OD06dPMmzeP06dP8/fff6NSqejXrx8XLlxgyZIlzJ49m4oVKwJ3lx1OnTqVDz74gEGDBjF69Gji4+P5+uuvadu2LceOHTPMnJs7dy7jxo2jTZs2vP7660RFRdGnTx8qVKhgCAAAZGZm0r59ey5evMi4cePw8/NjxYoVhISEkJSUxKuvvmp0DQsWLCArK4vnnnsOS0tLnJ2d0el0Ba7V1Ps6efJkpk+fzujRo2nWrBkpKSkcPnyYo0eP0qVLlyLv5e+//46VlVWRMx79/Pxo3bo1f/31F5mZmTRp0gR/f3+WL1/OiBEjjOouW7aMChUqGAKYsbGxPPHEE6hUKsaNG4erqyt//vkno0aNIiUlhddee83o/I8//hgLCwvGjx9PdnY2FhYWBcbj6urK3LlzefHFF+nbty/9+vUDoH79+oY6Wq2WoKAgmjdvzqxZs9i2bRuff/45VatW5cUXXzTUK8139H6Ojo589dVXDBw4kPnz53PmzBliY2P5888/UalU/PXXX3Tr1o3AwEAmTZqEWq1mwYIFdOzYkT179tCsWTNA/53bv38/Q4YMoXLlykRFRTF37lzat2/PmTNnsLGxMer3pZdewtXVlQ8//JD09HQAXnjhBVauXMm4ceMICAjg1q1b7N27l7Nnz9K4ceMir0EIIYQQwkARQohysmDBAgVQtm3bpsTHxyvXrl1TVq5cqbi6uiqWlpbKtWvXDHXz8vKU7Oxso/Nv376tuLu7K88++6yhLDIyUgEUFxcXJTEx0VC+bt06BVB+//13Q9mIESMUW1tbRVEUZe/evYqDg4PSo0cPJSsrq8SxN2zYUHFzc1Nu3bplKDt+/LiiVquV4cOHG8p27NihAMqKFStKbDO/blGv6OhoRVEU5fz58wqgfP3110bnv/TSS4qdnZ2SkZGhKIqi7NmzRwGUxYsXG9XbtGlTgXIfHx8FUHbv3m0oi4uLUywtLZU333zTULZixQoFUHbs2FHi9dyvR48eio+Pj+F9UlKSYmVlpbzzzjtG9V555RXF1tZWSUtLUxTl7mdqbW2tXL9+3VDv4MGDCqC8/vrrhrJOnTop9erVM/oMdTqd0rJlS6V69erFjq9v374KoNy+fduk68m/z/dasmRJgfs4c+ZMBVAiIyON6kZFRSkajUaZOnWqUfnJkycVMzMzQ3l2drbi4uKiNG3aVMnNzTXUCw0NVQClXbt2hrIvv/xSAZRFixYZynJycpQWLVoodnZ2SkpKiqIod++pg4ODEhcXZ9R//rEFCxYYyky9rw0aNFB69OhR1C0rkpOTk9KgQYNi67zyyisKoJw4cUJRFEWZMGGCYm5ubvQ9z87OVpycnIz+TBg1apTi6empJCQkGLU3ZMgQxdHR0fA55n///P39C/1s7xcfH68AyqRJkwocGzFihAIoH330kVF5o0aNlMDAQMP70nxHi9OzZ0/F0dFR0Wg0yoQJExRF0X8+1atXV4KCghSdTmeom5GRofj5+SldunQxKrvfgQMHFEBZuHChoSz/z+zWrVsreXl5RvUdHR2VsWPHmjReIYQQQojCyBI8IUS569y5M66urnh7ezNgwABsbW1Zv3690cwOjUZjmImg0+lITEwkLy+PJk2aFLrEY/DgwUYzqPKX9V2+fLlA3R07dhAUFESnTp1YvXo1lpaWxY43Ojqa8PBwQkJCcHZ2NpTXr1+fLl268Mcff5TuBtznww8/ZOvWrQVe+X3VqFGDhg0bsmzZMsM5Wq2WlStX0qtXL8PMrRUrVuDo6EiXLl1ISEgwvAIDA7GzsyuwfDEgIMBwn0A/y6NmzZqF3rOy4OjoSO/evVmyZAmKohiuY9myZfTp06dAXpk+ffrg5eVleN+sWTOaN29uuN+JiYn89ddfDBo0yDCLLCEhgVu3bhEUFERERESxuyvmL7Wyt7c3afz3zpDLysoiISGBJ554AsCkZUerV69Gp9MxaNAgo8/Hw8OD6tWrGz6fw4cPc+vWLcaMGYOZ2d2JycOGDTP6GQf4448/8PDw4KmnnjKUmZub88orr5CWlsauXbuM6vfv37/EJPClua9OTk6cPn2aiIiIEq//XqmpqSXe9/zj+Z/T4MGDyc3NZfXq1YY6W7ZsISkpicGDBwOgKAqrVq2iV69eKIpidJ+DgoJITk4u8FmNGDGi2NmPpZG/DC5fmzZtjL5Ppf2OFuXbb78lJycHb29vPvjgA0C/nDgiIoKhQ4dy69YtQ9vp6el06tSJ3bt3G2a73Xu9ubm53Lp1i2rVquHk5FToz/KYMWPQaDRGZU5OThw8eJCbN2+adnOEEEIIIe4jS/CEEOXu22+/pUaNGiQnJ/Pzzz+ze/fuQoNAv/zyC59//jnnzp0jNzfXUO7n51egbpUqVYze5z+o359XJSsrix49ehAYGMjy5cuNHvCLcuXKFUCfp+h+tWvXZvPmzQ+VmLdevXp07ty52DqDBw9m4sSJ3LhxAy8vL3bu3ElcXJzhwRsgIiKC5ORk3NzcCm0jP0F6vvvvGejvmym5aB7U8OHDWbZsGXv27KFt27Zs27aN2NjYQpfBVa9evUBZjRo1WL58OaBfQqgoCh988IHhIfx+cXFxRkGsezk4OAD6YIgpSeMTExOZMmUKS5cuLXAvk5OTSzw/IiICRVEKvS7AsPQq/+etWrVqRsfNzMwK7ER45coVqlevXiBpdv4yyfy28hX23blfae7rRx99RO/evalRowZ169YlODiYZ555xmhpWmHs7e1JTU0ttk7+8fxAVIMGDahVqxbLli1j1KhRgH75XcWKFenYsSMA8fHxJCUlMW/ePObNm1fk2O9lyj0xhZWVVYHg3v3fp9J+R4tSpUoV3NzcqFOnjiGYlB8EvH+J4r2Sk5OpUKECmZmZTJ8+nQULFnDjxg1DQDi/zv0Ku0efffYZI0aMwNvbm8DAQLp3787w4cPx9/c36RqEEEIIISQAJYQod82aNTPsgtenTx9at27N0KFDOX/+PHZ2doA+UXNISAh9+vThrbfews3NDY1Gw/Tp042Slee7/1/n8937YAX6xNLdu3dn3bp1bNq0iZ49e5bx1ZWPwYMHM2HCBFasWMFrr73G8uXLcXR0JDg42FBHp9Ph5ubG4sWLC23j/odjU+9ZWQoKCsLd3Z1FixbRtm1bFi1ahIeHR4kBuMLkz+YYP368If/P/e4P4tyrVq1aAJw8edJoJlhRBg0axP79+3nrrbdo2LAhdnZ26HQ6goODC82jVNh4VSoVf/75Z6H3Pv9nvzyZMtOnNPe1bdu2XLp0iXXr1rFlyxbmz5/P7Nmz+f777xk9enSRfdSuXZtjx46RnZ1d5AzEEydOYG5ubhSwGzx4MFOnTiUhIQF7e3vWr1/PU089ZQgk54/96aefLjIQc39wrKxmPxX1fbpXab+jpZF/7TNnziyQIy9f/s/Yyy+/zIIFCwwJzB0dHVGpVAwZMqTQn+XC7tGgQYNo06YNa9asYcuWLcycOZMZM2awevVqunXr9sDXIYQQQoj/HxKAEkI8UvlBpQ4dOvDNN9/w7rvvArBy5Ur8/f1ZvXo1KpXKUH/SpEkP1Z9KpWLx4sX07t2bgQMH8ueff5a4U52Pjw8A58+fL3Ds3LlzVKxYsdy3Jffz86NZs2YsW7aMcePGsXr1avr06WP08F61alW2bdtGq1atyuyh+t57XxY0Gg1Dhw4lNDSUGTNmsHbt2kKX9wCFLuu6cOGCYRZQ/kwLc3PzBwpg9erVi+nTp7No0aISA1C3b99m+/btTJkyhQ8//LDYMRZ1z6pWrYqiKPj5+VGjRo0i+8r/ebt48aLR7od5eXlERUUZBVB8fHw4ceIEOp3OaBbUuXPnjNoqjdLeV2dnZ0aOHMnIkSNJS0ujbdu2TJ48udgAVM+ePTlw4AArVqzg6aefLnA8KiqKPXv20LlzZ6Of5cGDBzNlyhRWrVqFu7s7KSkpRkn4XV1dsbe3R6vVPtDPRHHK4rtQHt/Re9sG/cy+kq595cqVjBgxgs8//9xQlpWVRVJSUqn69PT05KWXXuKll14iLi6Oxo0bM3XqVAlACSGEEMIkkgNKCPHItW/fnmbNmvHll1+SlZUF3J1NcO9snIMHD3LgwIGH7s/CwoLVq1fTtGlTevXqxaFDh4qt7+npScOGDfnll1+MHtBOnTrFli1b6N69+0OPyRSDBw/m77//5ueffyYhIcFo+R3oZyRotVo+/vjjAufm5eWV+uESMATWHuTcojzzzDPcvn2b559/nrS0tEIDEABr1641yuF06NAhDh48aHi4dXNzo3379vzwww9ER0cXOD8+Pr7YcbRo0YLg4GDmz5/P2rVrCxzPyclh/PjxQOE/jwBffvllgfOKumf9+vVDo9EwZcqUAu0oisKtW7cAaNKkCS4uLvz444/k5eUZ6ixevLjA8sju3bsTExNjlB8sLy+Pr7/+Gjs7O9q1a1fMHShcae5r/pjz2dnZUa1aNbKzs4vt4/nnn8fNzY233nqrQM6xrKwsRo4ciaIoRsE+0M+cqlevHsuWLWPZsmV4enrStm1bw3GNRkP//v1ZtWoVp06dKnbspZW/M9zDfBfK4zuaLzAwkKpVqzJr1izS0tIKHL/32jUaTYGfwa+//hqtVmtSX1qttsBSPTc3NypVqlTiZy+EEEIIkU9mQAkhHou33nqLgQMHEhoaygsvvEDPnj1ZvXo1ffv2pUePHkRGRvL9998TEBBQ6MNVaVlbW7NhwwY6duxIt27d2LVrF3Xr1i2y/syZM+nWrRstWrRg1KhRZGZm8vXXX+Po6MjkyZMfaix79uwxBN7uVb9+faPZLoMGDWL8+PGMHz8eZ2fnArMc2rVrx/PPP8/06dMJDw+na9eumJubExERwYoVK5gzZw4DBgwo1dgaNmyIRqNhxowZJCcnY2lpSceOHYvMYWOKRo0aUbduXVasWEHt2rWL3LK9WrVqtG7dmhdffJHs7Gy+/PJLXFxcePvttw11vv32W1q3bk29evUYM2YM/v7+xMbGcuDAAa5fv87x48eLHcvChQvp2rUr/fr1o1evXnTq1AlbW1siIiJYunQp0dHRzJo1CwcHB9q2bctnn31Gbm4uXl5ebNmyhcjIyAJtBgYGAvDee+8xZMgQzM3N6dWrF1WrVuWTTz5hwoQJREVF0adPH+zt7YmMjGTNmjU899xzjB8/HgsLCyZPnszLL79Mx44dGTRoEFFRUYSGhlK1alWjmTjPPfccP/zwAyEhIRw5cgRfX19WrlzJvn37+PLLL01OsH4/U+9rQEAA7du3JzAwEGdnZw4fPszKlSsZN25cse27uLiwcuVKevToQePGjRk9ejQBAQHExMQQGhrKxYsXmTNnDi1btixw7uDBg/nwww+xsrJi1KhRBfJfffrpp+zYsYPmzZszZswYAgICSExM5OjRo2zbto3ExMQHuifW1tYEBASwbNkyatSogbOzM3Xr1i32z437lcd3NJ9arWb+/Pl069aNOnXqMHLkSLy8vLhx4wY7duzAwcGB33//HdDPQPv1119xdHQkICCAAwcOsG3bNlxcXEzqKzU1lcqVKzNgwAAaNGiAnZ0d27ZtIywszGhWlRBCCCFEsR79xntCiP8X+Vt6h4WFFTim1WqVqlWrKlWrVlXy8vIUnU6nTJs2TfHx8VEsLS2VRo0aKRs2bFBGjBih+Pj4GM7L30J+5syZBdrkvi3TR4wYodja2hrVSUhIUAICAhQPDw8lIiKi2PFv27ZNadWqlWJtba04ODgovXr1Us6cOWNUJ39r9xUrVpR4P/LrFvUqbLv3Vq1aKYAyevToItudN2+eEhgYqFhbWyv29vZKvXr1lLffflu5efOmoY6Pj4/So0ePAue2a9dOadeunVHZjz/+qPj7+ysajUYBlB07dpR4bYqiKD169DD6rO712WefKYAybdq0Asfu/Uw///xzxdvbW7G0tFTatGmjHD9+vED9S5cuKcOHD1c8PDwUc3NzxcvLS+nZs6eycuVKk8aZkZGhzJo1S2natKliZ2enWFhYKNWrV1defvll5eLFi4Z6169fV/r27as4OTkpjo6OysCBA5WbN28W+ll9/PHHipeXl6JWqxVAiYyMNBxbtWqV0rp1a8XW1laxtbVVatWqpYwdO1Y5f/68URtfffWV4ee/WbNmyr59+5TAwEAlODjYqF5sbKwycuRIpWLFioqFhYVSr149ZcGCBUXe06Lu9/3nmHJfP/nkE6VZs2aKk5OTYm1trdSqVUuZOnWqkpOTY8Kd1/c9ZswYpUqVKoq5ublSsWJF5cknn1T27NlT5DkRERGG78jevXsLrRMbG6uMHTtW8fb2VszNzRUPDw+lU6dOyrx58wx1SvNdzbd//34lMDBQsbCwMPrcC/uzRVEUZdKkSUphf7Uy5TtakqK+w8eOHVP69eunuLi4KJaWloqPj48yaNAgZfv27YY6t2/fNvzM2NnZKUFBQcq5c+cUHx8fZcSIEYZ6Rf2ZnZ2drbz11ltKgwYNFHt7e8XW1lZp0KCB8t1335k8fiGEEEIIlaKUY/ZZIYQQApgzZw6vv/46UVFRBXbji4qKws/Pj5kzZxqWwAl9kmlXV1f69evHjz/++LiHI4QQQgghxEORHFBCCCHKlaIo/PTTT7Rr165A8EnoZWVlFcjRs3DhQhITE0tMmi+EEEIIIcS/geSAEkIIUS7S09NZv349O3bs4OTJk6xbt+5xD+kf6++//+b1119n4MCBuLi4cPToUX766Sfq1q3LwIEDH/fwhBBCCCGEeGgSgBJCCFEu4uPjGTp0KE5OTkycOJEnn3zycQ/pH8vX1xdvb2+++uorEhMTcXZ2Zvjw4Xz66adYWFg87uEJIYQQQgjx0CQHlBBCCCGEEEIIIYQoV5IDSgghhBBCCCGEEEKUKwlACSGEEEIIIYQQQohy9Z/PAaXT6bh58yb29vaoVKrHPRwhhBBCCCGEeGiKopCamkqlSpVQq2VegRDin+8/H4C6efMm3t7ej3sYQgghhBBCCFHmrl27RuXKlR/3MIQQokT/+QCUvb09oP+D2cHB4TGPRgghhBBCCCEeXkpKCt7e3obnHSGE+Kf7zweg8pfdOTg4SABKCCGEEEII8Z8iaUaEEP8WslhYCCGEEEIIIYQQQpQrCUAJIYQQQgghhBBCiHIlASghhBBCCCGEEEIIUa7+8zmghBBCCCGEEEL8c2m1WnJzcx/3MIQQD8Dc3ByNRmNSXQlACSGEEEIIIYR45BRFISYmhqSkpMc9FCHEQ3BycsLDw6PETREkACWEEEIIIYQQ4pHLDz65ublhY2MjO/oJ8S+jKAoZGRnExcUB4OnpWWx9CUAJIYQQQgghhHiktFqtIfjk4uLyuIcjhHhA1tbWAMTFxeHm5lbscjxJQi6EEEIIIYQQ4pHKz/lkY2PzmEcihHhY+d/jknK5SQBKCCGEEEIIIcRjIcvuhPj3M/V7LAEoIYQQQgghhBBCCFGuJAAlhBBCCCGEEEIIIcqVBKCEEEIIIYQQQoj/gJCQEFQqVYFXcHDwIx3H5MmTadiwYbF1fH19Cx1r/iskJOSRjFU8OrILnhBCCCGEEEII8R8RHBzMggULjMosLS0f02iKFhYWhlarBWD//v3079+f8+fP4+DgANzdXU38d8gMKCGEEEIIIYQQ4j/C0tISDw8Po1eFChUAGDp0KIMHDzaqn5ubS8WKFVm4cCEAOp2O6dOn4+fnh7W1NQ0aNGDlypWG+jt37kSlUrF9+3aaNGmCjY0NLVu25Pz58wCEhoYyZcoUjh8/bpjNFBoaWmCcrq6uhvE5OzsD4Obmhru7O61bt+bHH380qh8eHo5KpeLixYuAPvH13Llz6datG9bW1vj7+xuNE+DatWsMGjQIJycnnJ2d6d27N1FRUQ9+c8VDkQCUEEIIIYQQQgjxf2DYsGH8/vvvpKWlGco2b95MRkYGffv2BWD69OksXLiQ77//ntOnT/P666/z9NNPs2vXLqO23nvvPT7//HMOHz6MmZkZzz77LACDBw/mzTffpE6dOkRHRxMdHV0g6FUclUrFs88+W2AW14IFC2jbti3VqlUzlH3wwQf079+f48ePM2zYMIYMGcLZs2cBfWAtKCgIe3t79uzZw759+7CzsyM4OJicnJzS3ThRJiQAJYQQQgghhBBC/Eds2LABOzs7o9e0adMACAoKwtbWljVr1hjq//bbbzz55JPY29uTnZ3NtGnT+PnnnwkKCsLf35+QkBCefvppfvjhB6N+pk6dSrt27QgICODdd99l//79ZGVlYW1tjZ2dHWZmZoYZTqVdThcSEsL58+c5dOgQoA8m/fbbb4YgV76BAwcyevRoatSowccff0yTJk34+uuvAVi2bBk6nY758+dTr149ateuzYIFC7h69So7d+4s7W0VZUByQAkhhBBCCCGEEP8RHTp0YO7cuUZl+UvczMzMGDRoEIsXL+aZZ54hPT2ddevWsXTpUgAuXrxIRkYGXbp0MTo/JyeHRo0aGZXVr1/f8HtPT08A4uLiqFKlykNfQ6VKlejRowc///wzzZo14/fffyc7O5uBAwca1WvRokWB9+Hh4QAcP36cixcvYm9vb1QnKyuLS5cuPfQYRelJAEoIIYQQQgghhPiPsLW1NVqmdr9hw4bRrl074uLi2Lp1K9bW1oZd8vKX5m3cuBEvLy+j8+5PZG5ubm74vUqlAvT5o8rK6NGjeeaZZ5g9ezYLFixg8ODB2NjYmHx+WloagYGBLF68uMAxV1fXMhunMJ0EoIQQQgghhBBCiP8TLVu2xNvbm2XLlvHnn38ycOBAQzApICAAS0tLrl69Srt27R64DwsLC8MOdw+qe/fu2NraMnfuXDZt2sTu3bsL1Pn7778ZPny40fv8mVqNGzdm2bJluLm5GXbWE4+XBKCEEEIIIYQQQoj/iOzsbGJiYozKzMzMqFixouH90KFD+f7777lw4QI7duwwlNvb2zN+/Hhef/11dDodrVu3Jjk5mX379uHg4MCIESNMGoOvry+RkZGEh4dTuXJl7O3tC8ygKolGoyEkJIQJEyZQvXr1AsvtAFasWEGTJk1o3bo1ixcv5tChQ/z000+AfqbXzJkz6d27Nx999BGVK1fmypUrrF69mrfffpvKlSuXajzi4UkSciGEEEIIIYQQ4j9i06ZNeHp6Gr1at25tVGfYsGGcOXMGLy8vWrVqZXTs448/5oMPPmD69OnUrl2b4OBgNm7ciJ+fn8lj6N+/P8HBwXTo0AFXV1eWLFnyQNcyatQocnJyGDlyZKHHp0yZwtKlS6lfvz4LFy5kyZIlBAQEAGBjY8Pu3bupUqUK/fr1o3bt2owaNYqsrCyZEfWYqBRFUR73IMpTSkoKjo6OJCcnyw+ZEEIIIYQQ4j/h3/6ck5WVRWRkJH5+flhZWT3u4Yh/qD179tCpUyeuXbuGu7u70TGVSsWaNWvo06fP4xmcMDD1+yxL8IQQQgghhBBCCPGPkZ2dTXx8PJMnT2bgwIEFgk/i30mW4AkhhBBCCCGEEOIfY8mSJfj4+JCUlMRnn332uIcjyojMgBJCCCGEEKIcaXVajsYdJT4jHlcbVxq7NUaj1pRbf4pWS8bhI+TFx2Pm6opNk0BUmvLr71HKzsll4/Kd3I6Np4K7Kz0GtcfSwrzkEx+UTgtX9kNaLNi5g09LKMfPTgihFxISQkhISLF1/uPZhP6TJAAlhBBCCCFEOdl2ZRufHvqU2IxYQ5m7jTvvNnuXzj6dy7y/lC1biJ02nbx7dsAy8/DAfeIEHLp2LfP+HqWF36wgbt8qVLo0AJKArzf+hFur/gwfN7DsOzyzHja9Ayk375Y5VILgGRDwZNn3J4QQ/3GyBE8IIYQQQohysO3KNt7Y+YZR8AkgLiOON3a+wbYr28q0v5QtW7jx6mtGwSeAvNhYbrz6GilbtpRpf4/Swm9WEL/nF0PwKZ9Kl0b8nl9Y+M2Ksu3wzHpYPtw4+ASQEq0vP7O+bPsTQoj/AxKAEkIIIYQQooxpdVo+PfQpCgWXiOSXzTg0A61OWyb9KVotsdOmQ2FLUu6UxU6bjqItm/4epeycXOL2rSq2Tty+VWTn5JZNhzqtfuZTIZ+doWzTu/p6QgghTCYBKCGEEEIIIcrY0bijBWY+3UtBISYjhqNxR8ukv4zDRwrMfDLuUCEvJoaMw0fKpL9HaePynQVmPt1PpUtj4/KdZdPhlf0FZz4ZUSDlhr6eEEIIk0kASgghhBBCiDIWnxFfpvVKkhdvWjum1vsnuR1r2phNrVeitKIDhw9UTwghBCABKCGEEEIIIcqcq41rmdYriZmrae2YWu+fpIK7aWM2tV6J7NzLtp4QQghAAlBCCCGEEEKUucZujXG3cUeFqsg6rtauNHZrXCb92TQJxMy9mICISoWZhwc2TQLLpL9HqV2X+iglPbao7egxqH3ZdGhmBari+lOBgxf4tCyb/oQoweTJk2nYsOHjHoYQD00CUEIIIYQQQpQxjVrDu83eLTQJeb7MvExO3zpdJv2pNBpsW7Uq4qA+COY+cQIqjaZM+ntU4qIus3Ly26jQFVvP3LoDx/64iqIr+n6b5Ozv8EsvUPL7uz+AeOd98Keg/nfdy/8qrU7hwKVbrAu/wYFLt9A+7M+ACUJCQlCpVIaXi4sLwcHBnDhxwuQ2igoqqVQq1q5dW3aDFeIfRAJQQgghhBBClIPOPp3p7te9QLmrtSuVbCuRlpvGs5ufZXPU5ofuKy8xkdStWwFQOzgYHVM7OOA150scunZ96H4epctHw1j64dukJd5CbeuKmXVHUNkZ1VEwx9ZvIBqL6hzZdIUtP50mL+cBdqdTFNg3B5Y9A3mZUK0z9J0HDp7G9RwqwaCFEPDkQ1yZKCubTkXTesZfPPXj37y6NJynfvyb1jP+YtOp6HLvOzg4mOjoaKKjo9m+fTtmZmb07Nmz3PsV4t9MAlBCCCGEEEKUk5tp+t3Unqn9DDPazODnoJ/ZOmAra3qvoV3ldmRrsxm/azzzT85HUR585kb87C/RpaZiGVCb6nv3UOWXX7APDgbAslq1f13w6eif61n72cfkZmfhUaMuOvMBmFk1xL7z2/j1ehWbqvrlb7fM7PAc0plOI2qj1qi4eCSOtbOPkZGSY3pn2lz4/VXY+iGgQJNR8NQyaDAYXjsFIzZA/5/0v752UoJP/xCbTkXz4qKjRCdnGZXHJGfx4qKj5R6EsrS0xMPDAw8PDxo2bMi7777LtWvXiL+T6P+dd96hRo0a2NjY4O/vzwcffEBubi4AoaGhTJkyhePHjxtmUYWGhuLr6wtA3759UalUhveFmT9/PrVr18bKyopatWrx3XffGY7l5OQwbtw4PD09sbKywsfHh+nTp5fbvRDCVGaPewBCCCGEEEL8FyVlJXEiQb8kZ3id4XjYehiO2ahtmNNhDrMOz2LR2UXMOTqHKylX+PCJDzHXmJeqn8xTp0lauRIAj/ffR21hgW3zZlj4+pC6ZQuZR46QHRmJpZ9f2V1cOdFptez45UfCN28AoF7HroTHN8JWlUuyJYwfXh8LCzMy057gu9EHqJh3m9W7T/HLK0HYu1jx5/cniY1MYeWMw/QYWx+XSnbFd5iZBCtGwOWdgAqCpsETLxqWLaLWgF+b8rxkcYeiKGTmmjZ7TatTmLT+dKELXBX0CyUnrz9Dq2oV0aiLzsOWz9pcg0pVcr2ipKWlsWjRIqpVq4aLiwsA9vb2hIaGUqlSJU6ePMmYMWOwt7fn7bffZvDgwZw6dYpNmzaxbds2ABwdHenRowdubm4sWLCA4OBgNEUsmV28eDEffvgh33zzDY0aNeLYsWOMGTMGW1tbRowYwVdffcX69etZvnw5VapU4dq1a1y7du2Br0+IsiIBKCGEEEIIIcrB3pt70Sk6alSoYRR8yqdRa3in2Tv4OPgw/dB01l5cy420G8xuPxtHS0eT+lAUhdhPPgFFwaFXL2wa301qbu7ujl3btqTt3EnyqlW4jR9fZtdWHrIzMtg4ZwaR4UdApaLt0BDyvFpg/eNZQEXTvlWxsNA/vljb2VPRvwYJl85z69xxohJa41ujAgPeacKGb46THJ/J6s+OEPxcPbwDnAvv8HYULB4ECefB3BYG/AQ1uz2y6xXGMnO1BHz48MtRQR+EiknJot7kLSbVP/NREDYWpXs03rBhA3Z2+gBneno6np6ebNiwAbVav8jo/fffN9T19fVl/PjxLF26lLfffhtra2vs7OwwMzPDw+Punw3W1tYAODk5GZXfb9KkSXz++ef069cPAD8/P86cOcMPP/zAiBEjuHr1KtWrV6d169aoVCp8fHxKdW1ClBdZgieEEEIIIUQ52H19NwBtK7cttt6QWkP4ttO32JrbEhYTxtN/PM3VlKsm9ZHy++9khoejsrHBbfybBY47DRwAQNKatSh3lv/8E6UkxLF00ttEhh/BzMKSJ1+fQGDPvvz12wXUqEh2NadLe+OH6FpNmwPgm3GF5Yf1szuc3G0Y8E4TPKs5kpOl5fdvjnNq942CHV47BD920gef7CvBs39K8EmUSocOHQgPDyc8PJxDhw4RFBREt27duHLlCgDLli2jVatWeHh4YGdnx/vvv8/Vq6Z9r4uTnp7OpUuXGDVqFHZ2dobXJ598wqVLlwB9kvTw8HBq1qzJK6+8wpYtpgXihChvMgNKCCGEEEKIMpany2PfjX1AyQEogNZerVnYbSHjto8jKiWKYX8MY06HOTR2b1zkOdq0dOJmzgKg4gsvYO7uXqCOXdu2aFwroo1PIHXnThy6dHnAKyo/MZciWPvZR6Qn3cbWqQJ93voAj2o1WLryHE7pOnJRGDSqXoHz/Bs3Ze/ShVTOusHqsCje6FIDM40aKztzer/aiB2LznH+YAy7fjtPUlwGLftVQ61WwalVsOZF0GaDR30YukyfXFw8VtbmGs58FGRS3UORiYQsCCuxXujIpjTzK2IG3H19l5atrS3VqlUzvJ8/fz6Ojo78+OOP9OjRg2HDhjFlyhSCgoJwdHRk6dKlfP7556Xu535paWkA/PjjjzRv3tzoWP6SvcaNGxMZGcmff/7Jtm3bGDRoEJ07d2blnaW6QjwuEoASQgghhBCijJ2IP0FKTgqOlo7Ur1jfpHNqVKjBbz1+4+XtL3Pq1ilGbxnNlJZT6FW1V6H1b/3wPXnx8ZhXqYJzyIhC66jMzXHq05dbP/5I0sqV/7gAVMTB/fzxzefk5WRTsYovfd/5EIeKbiSnZnN1xw1sUaGp40g1X6cC51as4oudc0XSEhOwjL/MX+fi6FpHv2xJY66mU0htnNytObg+kuPbrpESn0mXGlsx3/ORvoGa3aHfj2BZQp4o8UioVCqTl8G1qe6Kp6MVMclZheaBUgEejla0qe5qUg6osqBSqVCr1WRmZrJ//358fHx47733DMfzZ0bls7CwQKstmPPK3Ny80PJ87u7uVKpUicuXLzNs2LAi6zk4ODB48GAGDx7MgAEDCA4OJjExEWfnkgNyQpQXWYInhBBCCCFEGctffteqUis0atNnV1S0rsjPwT/TxacLubpcJu6dyLfh3xbYIS8nKopbob8A4D7hXdQWFkW26dRfnycmfc9ecqPLf3t6UyiKwqF1K1n/xTTycrLxaxjIkCmf4VDRDYAF809gq1WRZgYjRzUotA2VSoV/4yYA+GZcZVnYtQLHm3T3o8uoADRmKiKPJ7BmjQPp2grQYhwMXiTBp38pjVrFpF4BgD7YdK/895N6BZRr8Ck7O5uYmBhiYmI4e/YsL7/8MmlpafTq1Yvq1atz9epVli5dyqVLl/jqq69Ys2aN0fm+vr5ERkYSHh5OQkIC2dnZhvLt27cTExPD7du3C+17ypQpTJ8+na+++ooLFy5w8uRJFixYwBdffAHAF198wZIlSzh37hwXLlxgxYoVeHh44OTkVG73QwhTSABKCCGEEEKIMrb7hmn5nwpjbWbNrHazeLbuswB8f/x73tnzDtnabEOd2OmfQm4utm3bYNe+fbHtWfj6YtOsGeh0JN33EPw4aPPy2Drva/b8FgpAw6Ae9Hn7QyxtbAA4c+EWqvMpAFTrWhk7m6J3BfRv3BQAn8wr7DgXS0xyVoE6NepY0LvGYqxUycTnVWVF+jziA97V73An/rWC63oy9+nGeDhaGZV7OFox9+nGBNf1LNf+N23ahKenJ56enjRv3pywsDBWrFhB+/btefLJJ3n99dcZN24cDRs2ZP/+/XzwwQdG5/fv35/g4GA6dOiAq6srS5YsAeDzzz9n69ateHt706hRo0L7Hj16NPPnz2fBggXUq1ePdu3aERoait+dnS7t7e357LPPaNKkCU2bNiUqKoo//vjDkCBdiMdFpdz/zyn/MSkpKTg6OpKcnIyDg8PjHo4QQgghhPiPi06LpuuqrqhVanYP3m3yjnaFWXVhFZ/8/Ql5Sh6N3BrxZYcvMf/7BNdfeBHMzfFftw5Lf78S20n+/XduvvU25pUqUXXbVlSP6UE0Kz2N37+YztVTx1Gp1LQfMYbG3YyXGE6dsBun23kkOaiZ8GnbYh+ac7Oy+Hb0U2hzc1nkNZhRPZ9gXMfqdyskXITfBkLiZZLV/mzMmsXtRBVmlhqCRtfBt17F8rrUcvdvf87JysoiMjISPz8/rKysSj6hCFqdwqHIROJSs3Czt6KZn/MjW3YnhNAz9fssIVAhhBBCCCHK0J4bewBo4NrgoYJPAP1r9Gdul7nYm9tzLO4Yw9cN5cbUjwFwHv6MScEnAPsuXVA7OJB78ybpBw481JgeVFJsDEveH8/VU8cxt7Kmz9sfFAg+bdh8CafbeWhR6DEioMQZG+ZWVnjX0efY8s24wrLD19Dp7vz7etRe+KkzJF4GR28cn19M//fbUrlWBfKytfzx3QmO/3WtmNbFv4FGraJFVRd6N/SiRVUXCT4J8Q8mASghhBBCCCHKUH7+pwdZfleYJzyfYFH3RXjZedFg5zWUazfROTtS8cUXTW5DbWWFYy99sCdpxaPfCevG+bP89v6bJN68jp1LRYZMmWFYPpcvMyuPUxv0iZpz/G1pWMfNpLb9G+nzQFXLvsa1xEwOXL4F4UtgYR/IvA1egTB6O7gHYGljTs+XG1C7lSeKAnuXR7B76QV0Wl2ZXq8QQoiCJAAlhBBCCCFEGcnKy+Jg9EEA2ni1KbN2/Z38+bXpHAbu17//oVUG66O3lqoNp4EDAEjdvp28xMQyG1tJzu3bxYqPJ5KZkoybX1WGffI5br7+Ber98stJ7HMhU60QMqbwxOOFyQ9kuWdGY6nNJPXPybD2BdDlQkBvGLEB7N0N9TUaNR2erkWLflVBBSd3XmfjdyfJycx76GsVQghRNAlACSGEEEIIUUbCYsLI0mbhbuNOjQo1yrTt3G9/xjJbR5x/BXbW0fHh/g+ZfWQ2OsW02TtWtWphVbcu5OaSvG59mY6tMIqi8PeqpWz8aiba3FyqNnmCIZNnYOfsUqDu1RspZIbrg2JurdypWMHa5H4c3Txw9vJGpeiYlDuf4Fu/6g+0fh0GhIKFTYFzVCoVjbv6EPxcXczM1Vw9fYvVs46QmlgwibkQQoiyIQEoIYQQQgghysiu67sA/fI7larsctFkHD2mDxqpVDT99Hueb6hffvfzqZ8Zv2s8mXmZJrXjNEA/Cypp5UrKcy+ivNxcNn37BfuWLwIgsGdfnnxzAuZFJKf9bf5JLBQVydYqhg0OKHV//nXrAFAh4xa5ioY9AZOh82QoIYdU1UZu9HmzMTYOFty6kc7KTw8TdyWl1P0LIYQomQSghBBCCCGEKAOKorDnuj4BeVnlfwJQtFpip04FwLF/P2zq12dsw7FMaz0Nc7U5W69sZdTmUSRkJgCQk5dH6JFtfLRjEaFHtpGTd3dpmUPPHqisrcm5dInMY+EPPTadTsu10yc4u28X106fQKfTkpmawqqpH3Bmzw5UajWdR4+l/TOjUKs1hbax+8B17KOzAWg9qDoas6IfUZTcHNLXzSd57oekr5uPkpsDcefwv/YLAJFpzgzPeYdPbgSaHGBz93VgwLtNcPGyJSMlhzWzjnL5WPyd61O4cf42F8JiuHH+9t0E50IIIUrN7HEPQAghhBBCiP+CS0mXuJl+Ewu1Bc08mpVZu0mrV5N1+jRqOzvcXn/dUN6rai8q2VXitR2vcTLhJEM3DqVphSf5/coyFE2Sod4Xx514pvorvNVmIBo7OxyCg0les4aklSuxadzogccVcXA/f4XOIy0xwVBm41gBVAoZSUlYWNvQ6/V38W3QuMg2tHk69i6PwBFI9bSkbYvKRdZN+Xkasd/+Sl763TKzKbNwb5JBJc8ULDWuZGrNuZHrxtXYVMKvJdGoSgWTrsXe2Yp+4wPZPP80V0/f4s95J6nRzJ0b55NIT8o21LN1sqTN4OpUbWRagnQhhBB3yQwoIYQQQgghysDuG/rd75p6NsXGvGDeoQehTUkh/ovZALi+PA4zF+P8SYHugSzuvhhfB1+i06NZd+0HdOokozo6dRK/XPqImXtWAHeTkaf8+SfatLQHGlfEwf2s/2KaUfAJICP5NhlJSVg7OPDUxzOLDT4BLF5+BsdMhRyVwtDR9Yqsl/LzNG58tpC8dOMZSHkZcGO3DenJfvg0ag5AB9tbACwLu1aqa7KwNqPHS/Wo184LFLhwMNYo+ASQnpTNph9OcelYXKnaFkIIIQEoIYQQQgghysTu6/oAVFuvslt+F//NN2hv38aialUqDB1aaJ0qDlX4uWsoKBpUKrg/9VT++18vfEVOXh7WjRph4e+PkplJysY/Sj0mnU7LX6Hziq2j1pjh7FX0bCaAhNuZxO2NBcC6oTNVvBwKrafk5hD77Z3E4tyfV0v/PnZPFn6NnwDAMyUSgPXHb5KWXbqd7dQaNa0H18DCuviFInuXR8hyPCGEKCUJQAkhhBBCCPGQkrOTCY8LB8ou/1N2RAS3F/8GgMd7E1GZmxdZd+O5Y6DSFnlcpQLFLInfju9EpVIZJSMvrRtnTxeY+XS/9NuJ3Dh7utg6v/x4HGudilRzGDGi6NlPGX8svLPsrqik7iry0sEj4SKoVKTfvEJtB4WMHC0bT9ws/mIKER2RRE5m8YGrtNvZREcklbptIUzl6+vLl19+WSZthYaG4uTkVCZtiYfzIJ+FSqVi7dq15TKeR00CUEIIIYQQQjykAzcPoFW0+Dv6U9m++Jk/plAUhZhp00Crxb5LF2xbtiy2/tWUGJPaza/n2PtJMDcn6+RJss6dK9XY0pJuP3S98NNxmF/WJ3Oq09MHa6uiZxzl3bxqUn/mibF4VK0OQI8KSQAsLeUyPID0lOySK5WinihnOi1E7oGTK/W/6ooOxJaFkJAQVCpVgVdwcHC59vswBg8ezIULFx55v5mZmdja2nLx4kVCQ0MN90qtVuPp6cngwYO5etW073d5e1RBnsf1WfxTSABKCCGEEEKIh2RYfldGs59St24l48DfqCwtcXvnnRLrV3HwMKnd/HpmLi7Yd+wIQNLKVaUam52TaYm9i6qn0+nY+MtZNKhIqmBGr6CqxbZjVqmKSf2ZVaqCf6OmALglX8ZMreLY1STOx6SadH4+WwfLMq0nytGZ9fBlXfilJ6wapf/1y7r68nIUHBxMdHS00WvJkiXl2ufDsLa2xs3t0SfO37p1Kz4+PlSrVg0ABwcHoqOjuXHjBqtWreL8+fMMHDjwkY/rcXpcn8U/hQSghBBCCCGEeAhanZa9N/YCZROA0mVlEffpDABcRo3CorJXiecMbdAeldYJpYi0RIoCaO0Z2qC9oSx/GV7y+vXosrJMHp+VvQMqdfGPEfYuFfGqXafQY2s3XsIpRUseCn1HFl7nXjbdh2NmC1BUziUFM1t9Pf/G+gBUzJkTdKmhT9he2mTkntWdsHUqPrhkV8ESz+pOpWpXlLEz62H5cEi5b5llSrS+vByDUJaWlnh4eBi9KlTQB1x37tyJhYUFe/bsMdT/7LPPcHNzIzZWn/Osffv2jBs3jnHjxuHo6EjFihX54IMPUIr6AgNXr16ld+/e2NnZ4eDgwKBBgwztARw/fpwOHTpgb2+Pg4MDgYGBHD58GCh82dfcuXOpWrUqFhYW1KxZk19//dXouEqlYv78+fTt2xcbGxuqV6/O+vV37+nt27cZNmwYrq6uWFtbU716dRYsWGDUxrp163jyySeN2vTw8MDT05OWLVsyatQoDh06REpKitE5jRs3xsrKCn9/f6ZMmUJeXp5RGz/88AM9e/bExsaG2rVrc+DAAS5evEj79u2xtbWlZcuWXLp0yeTr9fX1BaBv376oVCrDe1PGc68tW7ZgZWVFUlKSUfmrr75KxzsB/wf5LO537do1Bg0ahJOTE87OzvTu3ZuoqCjD8ZCQEPr06cOsWbPw9PTExcWFsWPHkpuba6iTnZ3NO++8g7e3N5aWllSrVo2ffvrJcPzUqVN069YNOzs73N3deeaZZ0hIKH7ptSkkACWEEEIIIcRDOHXrFLezb2Nvbk9Dt4YP3d6tn34i9+ZNzDw9cRkz2qRzLMzMeLraKwAFglCKcicHlCqT7w5tMJTbtmyBWSVPdCkppG7dZlI/USeOsfTDt1F0umLrdRjxHGq1pkB5WkYuEZv1ASGlhj0BNVwK1LmfytwC12cHFXFUf7HuY59BZW6Bm68/tk4VyM3OItg1A4DVx66TnWf6siy1WkWbwdWLrdN6UHXU6qJyUokHoiiQk27aKysF/nybwoOSd8o2vaOvZ0p7xQR+Sqt9+/a89tprPPPMMyQnJ3Ps2DE++OAD5s+fj7u7u6HeL7/8gpmZGYcOHWLOnDl88cUXzJ8/v9A2dTodvXv3JjExkV27drF161YuX77M4MGDDXWGDRtG5cqVCQsL48iRI7z77ruYF5E3bs2aNbz66qu8+eabnDp1iueff56RI0eyY8cOo3pTpkxh0KBBnDhxgu7duzNs2DASExMB+OCDDzhz5gx//vknZ8+eZe7cuVSsWNFozBs2bKB3796FjiEuLo41a9ag0WjQaPR/VuzZs4fhw4fz6quvcubMGX744QdCQ0OZOnWq0bkff/wxw4cPJzw8nFq1ajF06FCef/55JkyYwOHDh1EUhXHjxpl8vWFhYQAsWLCA6Ohow3tTx5OvU6dOODk5sWrV3VmlWq2WZcuWMWzYsIf6LPLl5uYSFBSEvb09e/bsYd++fdjZ2REcHExOTo6h3o4dO7h06RI7duzgl19+ITQ0lNDQUMPx4cOHs2TJEr766ivOnj3LDz/8gJ2dHQBJSUl07NiRRo0acfjwYTZt2kRsbCyDBhX157Dpit/eQQghhBBCCFGs/OV3LSq1wFxddKJwU+TeuMGteT8C4P7O26itrU0+t5NPJ+btuYyl+++ozJMN5SqtI2bYkWd2g/kXPiQiMYqvu7+CWqPBqV9/Er75hqSVK3Hs1bPY9k9s38S2+d+h6HR41apD3Q5d2LdskVFCcnuXinQY8RzVmxeesyr05xPY5UG6RuG50Q1MvrasW2aAClQKKPcGflR4vjQAh2cn6t+p1fg1asKpHVuxi4vA07Eq0clZbDkdS68GlUzur2ojN4Kfr8ueZRGkJ93N9WRXwZLWg6pTtdH/7xKacpObAdNM/4yKp+hnRn3qbVr1iTfBwtbk1jds2GB4WDc0MXEiEyfqfw4/+eQTtm7dynPPPcepU6cYMWKE0UwgAG9vb2bPno1KpaJmzZqcPHmS2bNnM2bMmAL9bd++nZMnTxIZGYm3t/6aFi5cSJ06dQgLC6Np06ZcvXqVt956i1q1agFQvXrRQdRZs2YREhLCSy+9BMAbb7zB33//zaxZs+jQoYOhXkhICE899RQA06ZN46uvvuLQoUMEBwdz9epVGjVqRJMmTQCMZg0B/P333wA0b97cUJacnIydnR2KopCRoQ8Qv/LKK9ja6u/9lClTePfddxkxYgQA/v7+fPzxx7z99ttMmjTJ0M7IkSMNwZB33nmHFi1a8MEHHxAUFAToZxyNHDnS5Ot1dXUFwMnJCQ+Pu8uZTR1PPo1Gw5AhQ/jtt98YNWoUoP/skpKS6N+//0N9FvmWLVuGTqdj/vz5qO5scbpgwQKcnJzYuXMnXbt2BaBChQp88803aDQaatWqRY8ePdi+fTtjxozhwoULLF++nK1bt9K5c2fDteX75ptvaNSoEdOmTTOU/fzzz3h7e3PhwgVq1KhR6LWYQgJQQgghhBBCPIQ91/VLbcpi+V3szFko2dnYNGuG/Z2HKVMtPXSNvNS69K7WhXrVErmaEkMVBw+GNmhPnqJl4Iq3uZr7F7tv/UTvZVdYMWAGTv36kvDtt2QcPEjOlStY+PgUaFfR6dj9WyiHf18NQO02Hej6/CuYmZsT0LaDfle8pNvYOVXAq3adQmc+AVyMSiLvVBLmqPBuXwknE3MoZZ0/z+2lSwHwbncLVYsXycuAhLX7yLlykzxr4xxR/o2acmrHVqLCwxjYsz1fbY9gWdi1UgWgQB+E8mvgSnREEukp2dg66Jfdycwn0aFDB+bOnWtU5uzsbPi9hYUFixcvpn79+vj4+DB79uwCbTzxxBOGAAJAixYt+Pzzz9FqtYYZQfnOnj2Lt7e3IfgEEBAQgJOTE2fPnqVp06a88cYbjB49ml9//ZXOnTszcOBAqlYtPL/a2bNnee6554zKWrVqxZw5c4zK6tevb/i9ra0tDg4OxMXFAfDiiy/Sv39/jh49SteuXenTpw8t79ksYd26dfTs2RP1Pct17e3tOXr0KLm5ufz5558sXrzYaDbR8ePH2bdvn1GZVqslKyuLjIwMbGxsCowrf1ZZvXr1jMqysrJISUnBwcHB5Ou9n6njudewYcN44oknuHnzJpUqVWLx4sX06NGjyJ3vSju248ePc/HiRezt7Y3Ks7KyjJYd1qlTx+jnyNPTk5MnTwIQHh6ORqOhXbt2RfaxY8eOAkFWgEuXLkkASgghhBBCiMchLiOOs4lnUaGitVfrh2or/e+DpG7aBGo17u+9Z/RwWpLUrFw2nIgGYOgTvgT6NDY6boEZvw+ZzdiNX7LnVihROdvouHgEq/t/h23r1qTv2UPSqtW4vfG60Xm5WVn88c0sLobpZzO0HDSMJ/oNMYxNrdbgXac+pljx00kcUJFkq+LF/jVNOkdRFGI/mQo6HfbemdjV84fhU0ClQnFbTfR775G0ciUuo0cbxuRTvyFqjRlJMdF0q6zmaxXsvZjAtcQMvJ0LPjAWR61W4VXTtKTr4iGZ2+hnIpniyn5YPKDkesNWgk/xO0ga+i4FW1tbQ2Ltouzfvx+AxMREEhMTDbN8ysvkyZMZOnQoGzdu5M8//2TSpEksXbqUvn37PnCb9y/hU6lU6O4sv+3WrRtXrlzhjz/+YOvWrXTq1ImxY8cya9YsANavX8+nn35qdL5arTbct9q1a3Pp0iVefPFFQ86jtLQ0pkyZQr9+/QqMxcrKqtBx5X/vCyvTlbBUuCSmjudeTZs2pWrVqixdupQXX3yRNWvWGC19e1hpaWkEBgayePHiAsfyZ3JB8Z+ddQkza9PS0ujVqxczZswocMzT0/NBhm0gOaCEEEIIIYR4QPmzn+pWrIuLdcn5jIqi5OURe+df2Ss89RRWNUv3L8y/H48mM1dLNTc7GlcpPGCiVquZ2+sNRlabhKIzJ1V1im7Lh5DYUR84S1qzGuWe5LppibdYNuVdLob9jcbMjO6vvEWL/k+VKjCWb9uuKzjE56JDodOwWkazIoqTumkTGWFhqMzAvWEKNB6uT2gFOAQHoba1JffKVTLu5GwBsLC2ofKdBOiZl0/Rupo+L83yw6VLRi4eMZVKvwzOlFfVjuBQCSjqZ1EFDl76eqa09wA/08W5dOkSr7/+Oj/++CPNmzdnxIgRBYIhBw8eNHr/999/U7169QKzn0AfrLl27RrXrt39GT5z5gxJSUkEBAQYymrUqMHrr7/Oli1b6NevX4Gk4Pe2t2/fPqOyffv2GbVlCldXV0aMGMGiRYv48ssvmTdvHgARERFcuXKFLl26FHv+u+++y7Jlyzh69CgAjRs35vz581SrVq3Ay9Q/MwpjyvWam5uj1RrninvQ8QwbNozFixfz+++/o1ar6dGjx0ON7f4xRURE4ObmVmBMjo6ORfZzr3r16qHT6di1a1eRfZw+fRpfX98CfTxsIFUCUEIIIYQQQjyg/PxPbSq3eah2bi9ZSnZEBBonJ1xfHlfyCfdZFnYVgCFNvUsMEL3Zuj9Tm88FrQN5ZjcJSZtLnoM92vgE0nbrrycu6jKL33+T2MsXsbZ3YOAH06jdqvDlGiXJycnj0Gr90pBMb2ueaGzav6DrMjKInfEZAC61UjB30ED9IYbjaltbHO482CWtXGl0bv5ueJePhjGkqX6J3orD18nTPtyMCPEPodZAcP7sjPt/3u+8D/5UX68cZGdnExMTY/TK3yFMq9Xy9NNPExQUxMiRI1mwYAEnTpzg888/N2rj6tWrvPHGG5w/f54lS5bw9ddf8+qrrxbaX+fOnalXrx7Dhg3j6NGjHDp0iOHDh9OuXTuaNGlCZmYm48aNY+fOnVy5coV9+/YRFhZG7dq1C23vrbfeIjQ0lLlz5xIREcEXX3zB6tWrGT9+vMn34MMPP2TdunVcvHiR06dPs2HDBkN/69ato3PnzoUuUbuXt7c3ffv25cMPPzS0uXDhQqZMmcLp06c5e/YsS5cu5f333zd5XIUx5Xp9fX3Zvn07MTEx3L59+6HGk/85TZ06lQEDBmBpWfRy49J+FsOGDaNixYr07t2bPXv2EBkZyc6dO3nllVe4fv26SffD19eXESNG8Oyzz7J27VpDG8uXLwdg7NixJCYm8tRTTxEWFsalS5fYvHkzI0eOLBCkKy0JQAkhhBBCCPEAcrQ5HIg+ADxc/qe8xETiv/4aANfXXkNTRK6Qopy5mcLx68mYa1T0beRl0jm9A5rza7fFmOV5obVI449a+oTASStWcvlYGEsnvUParQScK1Vm6Cef41WrdDMj7vXrb2dwzIYslcIzpUg8nvDjj+TFxGBewRqXWmlQqyfYGs8ycxqoX4aVunkL2uS7idf9GukDUNfPnqatnx3OthbEpGSxOyL+ga9D/MMEPAmDFoLDfQFNh0r68oAnCz+vDGzatAlPT0+jV+vW+pmEU6dO5cqVK/zwww+AfsnSvHnzeP/99zl+/LihjeHDh5OZmUmzZs0YO3Ysr776aoFcQPlUKhXr1q2jQoUKtG3bls6dO+Pv78+yZcsAffLrW7duMXz4cGrUqMGgQYPo1q0bU6ZMKbS9Pn36MGfOHGbNmkWdOnX44YcfWLBgAe3btzf5HlhYWDBhwgTq169P27Zt0Wg0LL2Tq23dunUFkq4X5fXXX2fjxo0cOnSIoKAgNmzYwJYtW2jatClPPPEEs2fPxqeQ3HSlYcr1fv7552zduhVvb28aNWoE8MDjqVatGs2aNePEiRNF7n5XmrHdy8bGht27d1OlShX69etH7dq1GTVqFFlZWTg4OJh8T+bOncuAAQN46aWXqFWrFmPGjCE9PR2ASpUqsW/fPrRaLV27dqVevXq89tprODk5PdRMNACVopThnpP/QCkpKTg6OpKcnFyqD0QIIYQQQoji7L+5n+e3Pk9F64psH7gdterB/mIe/eEkkpYvx7J2bfxWrkBVyBKc4kxef5rQ/VH0qOfJt8Mal3zCPWLTkum/8iVsE4/z5TwtkRUdOVfZFUVRqFK3Pr1en4hVIYloTRUTl87iSX9jpaiwbO7C6JGmBaByrl3jco+eKDk5eLXPwsEjEZ5ZC1WNd4VSFIXIPn3JPn8e9w/ex/meh72fXh1DUkw0T74xkWXxTszfG0nXAHfmDW/ywNfzT/Jvf87JysoiMjISPz+/IvPpmESn1eeESosFO3d9zqdymvlUVtq3b0/Dhg358ssvH/dQylxCQgKenp5cv37dkCBc/PeZ+n2WGVBCCCGEEEI8gPz8T2282jxw8Cnz9GmSVqwAwOP990odfMrK1bL6qH7ZxeCmJm45fw93O0e2DwvF2jOYvTVcOOtVEUVRqNWuE/0mfPRQwSeAhfOPY6WoSLGE4cPqmHxe7IwZKDk52Nbzx949EZyqgF/BJYAqlQqnAfpZUEkrVnLvv63735kFdflYmOHebD8XR1xq1sNckvinUWvArw3UG6D/9R8efPqvS0xM5IsvvpDgkyiUBKCEEEIIIYR4APn5nx50+Z1hhzdFwaFnT2wCA0vdxubTMaRk5eHlZG1Itl1aqrxcRly1J8XaCYBKt2/xieVebqYlF39iCQ4ejcb6aiYAgX2qYmFh2gbcaXv3kbZtO2g0uDfL0eeHbjQcilj64dirJyoLC7LPnSPr9BlDud+dPFCRxw5TzdWWQJ8KaHUKq47ceKjrEkIUrUaNGrz88suPexjiH0oCUEIIIYQQQpRSVHIUV1OvYqY2o0WlFg/URsqGDWQeO4bKxga3t0xP/nuvpYf0u2INauKNWl36nbxSEuJZOukdLh8Nw8zCggY3b9HwahI+18/Ra9Ug/r56/oHGpdPp2Lb4PGpUJLua07WDaTlclNxcYqdNA8C5fw8s0w+BSg0NhxZ5jsbJCfuuXQFIWrnCUF65dl3MLa1IT7pNXNRlwyyoZWFX+Y9nIRH/cDt37vxPLr8ToiQSgBJCCCGEEKKU8mc/BboHYmte+m2ptWnpxH02E4CKzz+P+QMsV4lKSOfA5VuoVDCwSeVSnx97+SK/vf8m8VcisXWqwOBJn1KnczAAncLN0ZrFMWbbCH47XvhW3cVZvuYCTuk6clEYOKqeyeclLl5MzuXLaJydqRh451GlWhdwLD65ev4yvJQNG9Fl6BOqm5mb41O/IaDfDa9HPU/sLM2IupXBwcjEUl+TEEKIhyMBKCGEEEIIIUpp9407y++8Hmz53a0ffiAvPh7zKlVwDhnxQG0sP6yf/dSuhiuVnKxLdW5E2AGWTn6H9NuJVKziy9Cpn+NRrYYhkNP6og7nNC/QpDPt6Kt8tGORyW0np2Zz9S/9MjdNHUeq+zqZdF5eQgIJ33wLgNtrr6C5sFJ/oPHwEs+1adYU8ypV0KWlkbJ5i6Hc7548ULaWZvRqUAmAZWHXTL0cIYQQZUQCUEIIIYQQQpRCem46R2KPAA+W/yknKorE0FAA3N99F7WlZanbyNPqWHFEn3x8SCmSjyuKQtjvq1n/+TTysrPxbRjIkCmf4VDRDQDrOnWwDKgNubksshqAM41RqbWsuDqDEas/QafTldjHgvknsNWqSDODkc/WN3lscbNno0tLw6puXRzrWEN6HNi6QY2gEs9VqdU49e8PQNLKlYZy/0b6He9iLkWQkZxkuFd/nIwmOSPX5LEJIYR4eBKAEkIIIYQQohQO3DxAni6PKvZV8HX0LfX5sZ/OQMnNxbZNG+w6tH+gMew4H098ajYV7SzoWMu05XvavDy2/fgtuxf9DIpCg6496Pv2h1ja2BjVy58Flbt2PduG/URt6ycBOJq6jKDFL5KanVlkH2cibqE6nwJA1S6VsbO1MGlsmSdOkLxqNQDu701EFX5nxlXDoaAxN6kNxz59QKMh88gRsi9fBsDO2QU336qgKESGH6F+ZUdqediTnadj3XFJRi6EEI+SBKCEEEIIIYQohYfZ/S5t1y7Sdu4EMzPcJ0xApSp94nDQJ9IG6N+4MhZmJf+VPis9jdWfTubE9k2gUtFhxBg6PfsCak3BLesde/ZEZWlJdkQEeWfOsHzQVLp5vIyiqInR7afT4qFcTowttJ+1C05jhookezX9elUz6VoUnY6YqVP1fffujY2/G1zcqj9owvK7fObubti1awdA0spVhnL/xvpZUJePhqFSqQyzoJYcuibJyIUQ4hGSAJQQQgghhBAm0ik69tzYA0Cbym1MOkfJzSF93XySv3mP6PfeBcB5+HAs/f0eaAwxyVn8dS4OgEGFLL/T6bRcO32Cs/t2ce30CW7H3GTph29z9WQ45pZW9HnrfRp3711k8Evj4IBDsH7ZW9IK/XK2z4Ke49U6n4HWikzNRfquGcLuyNNk5eTy0+/b+DR0FdO/2ohjYh46FLoPD0CtNu1RI3nderKOn0BtY4Prm29A+G+g6MCnNbhULdW9yZ+9lbx2LUpODnA3D1TU8aNo8/Lo08gLCzM1Z6NTOHUjpVTtCyGEeHBmj3sAQgghhBBC/FucTTxLQmYC1mbWNHFvUmL9lJ+nEfvtr+SlG5db2qcXfoIJVh29jk6BZr7OVHW1MzoWcXA/f4XOIy0x4W6hSgWKgp2zC33e/hB3v5KDOk4DBpC8bj0pGzfi/u47qG1tGdM0iKrOnry282V0ZgnMXPUZra/2xi7HCXsqGM5NcEqnUT03k65Fm5ZG3OefA1Bx7EuYV6wIxxbqD5Zi9lM+u7ZtMHN1JS8+ntQdO3EI6opHtepY2zuQmZrCzfNn8K5Tn251PVgXfpOlYVepV9n0XfqEEEI8OJkBJYQQQgghhInyl9+18GyBhab4/EYpP0/jxmcLyUu/f5mXQvScpaT8PK3U/et0imEHt8H3zX6KOLif9V9MMw4+AdxZZtZiwFMmBZ8ArJs0wcLHB11GBimbNhnKO1atz6reS/GPa03QxeHY5jgad4WCa5ItXyxeZ1I/Cd/NRZuQgIWvL87PPAORuyDpKlg6QsCTJrVxL5WZGY79+gF3k5Gr1Rr8GgYCcPnYYeDuvVsffpOMnLxS9yP+ObQ6LWExYfxx+Q/CYsLQ6rTl3mdISAgqlQqVSoWFhQXVqlXjo48+Ii/vwX+WQkJC6NOnT9kNEpg8eTINGzYs0zaFeBgSgBJCCCGEEMJEe67rl9+VlP9Jyc0h9ttf77y7f6mb/n3st7+i5OaUqv+/L9/iamIG9pZmdK/naSjX6bT8FTqv+HNXLUVn4sO5SqXCaaB+OVv+Mrx83g4VaXm1q77efdeW/z73oI6snOJ3mcu+fJnEhfrZTu4TJ6CysICjv+gP1h8E5tYmjfV+Tv31Aaj0vXvJvXkTAL/G+mV4l4+GAfCEnws+LjakZufxx8mYB+pHPH7brmwjaFUQz25+lnf2vMOzm58laFUQ265sK/e+g4ODiY6OJiIigjfffJPJkyczc+bMAvVyckr3HRfiv0wCUEIIIYQQQpjgVuYtTiWcAkrO/5Txx8I7y+6KSjKuIi9dX680lt6Z/dS7USWsLe4mEL9x9nTBmU/3Sb2VwI2zp03uy7F3bzAzIzM8nOyICEP54s27sMt1LBB8yqdChV2OI4s37yqybUVRiJ02HfLysGvfHru2bSH9FpzdoK/wAMvv8llUqYLNE0+AopC0eg0Avg0ao1KrSbxxjeS4GNRqFYOa6GdB5Sd0F/8u265s442dbxCbYZwQPy4jjjd2vlHuQShLS0s8PDzw8fHhxRdfpHPnzqxfv94wk2nq1KlUqlSJmjVrAnDy5Ek6duyItbU1Li4uPPfcc6SlpQH6mUq//PIL69atM8ys2rlzJwDXrl1j0KBBODk54ezsTO/evYmKijKMY+fOnTRr1gxbW1ucnJxo1aoVV65cITQ0lClTpnD8+HFDm6GhoSiKwuTJk6lSpQqWlpZUqlSJV155pVzvlRD5JAAlhBBCCCGECfbe2IuCQm3n2rjZFJ/jKO+maUENU+sB3E7PYdMp/WydIU2rGB1LS7ptUhum1gMwc3XFvkN7wHhXufhbySadX1y9tB07Sd+7F5W5Oe4T9InZObEUdLng2RA865s8zsLkJyNPWr0KRavFytYOr5oBwN1ZUAMCK6NRqwiLus3FuNSH6k88PEVRyMjNMOmVmp3K9EPTUSi4i6Fy579PD31KanaqSe2VxW6I1tbWhtlO27dv5/z582zdupUNGzaQnp5OUFAQFSpUICwsjBUrVrBt2zbGjRsHwPjx4xk0aJBhVlV0dDQtW7YkNzeXoKAg7O3t2bNnD/v27cPOzo7g4GBycnLIy8ujT58+tGvXjhMnTnDgwAGee+45VCoVgwcP5s0336ROnTqGNgcPHsyqVauYPXs2P/zwAxEREaxdu5Z69SQPmng0JAm5EEIIIYQQJsjP/2TK7ndmrq4mtWlWqUrJle5YG36DHK2OOpUcqOt1X+4lrWlL6+ycKpRc6R5OAwaQunUbyevW4frmG6gtLHB1cSTLhHNdXRwLLddlZxM7fToAziEhWPj46PNUHX3w5OP3s+/SGbWjI3k3o0nffwC7Nq3xa9SE62dPcfnYYRoF98LdwYoONd3YdjaWZWHXeK9HwEP3Kx5cZl4mzX9rXmbtxWbE0nJpS5PqHhx6EBtzmwfqR1EUtm/fzubNm3n55ZeJj4/H1taW+fPnY2GhzxP3448/kpWVxcKFC7G1tQXgm2++oVevXsyYMQN3d3esra3Jzs7Gw8PD0PaiRYvQ6XTMnz/fsGvlggULcHJyYufOnTRp0oTk5GR69uxJ1ar6/G61a9c2nG9nZ4eZmZlRm1evXsXDw4POnTtjbm5OlSpVaNas2QNduxClJTOghBBCCCGEKEGuLpf9N/cDJed/4nYUNjd+wcxaC4XM0NBTMLMFm+6mBVsURWHpIf3yuyH3JR+/fvZUifmfAOxdKuJVu45J/eWzbd0aM3d3tElJpG3fDkAT+xqFzjwxjBWFVIvbVK1feJL2xNBfyL12DTM3Nyq+8PydiwiD+HNgZg31BpRqjIVRW1ri+KQ+iXl+MnL/O3mgrp0+QW6WPoSWfy9XHb1BTp7uofsV/z82bNiAnZ0dVlZWdOvWjcGDBzN58mQA6tWrZwg+AZw9e5YGDRoYgk8ArVq1QqfTcf78+SL7OH78OBcvXsTe3h47Ozvs7OxwdnYmKyuLS5cu4ezsTEhICEFBQfTq1Ys5c+YQHR1d7LgHDhxIZmYm/v7+jBkzhjVr1jxU8nQhSkNmQAkhhBBCCFGC8Lhw0nLTqGBZgboudYuueO0QLHkKVUYC7k+4cGNHYUEYffDGfewzqMyL30kv3/HryZyPTcXSTM2TDb0M5Wd2/8Xm779Cp83DycOTpJiiHz47jHgOtVpT5PHCqDQanPr3I+G7udxesZLTWdU5uvkqKlSGINS9uaDyy/b7rmbprtNMbD6RQTUHGY7nxsSQ8P33ALi9NR51/gN5fvLxOn3BqvCZU6XlNKA/t3/9ldS//iLv1i1cKlfBwdWNlPg4rp4+TtXA5rSv6YqbvSVxqdlsOxtrlNhdPFrWZtYcHHrQpLpHYo/w0vaXSqz3XafvCHQPNKnv0urQoQNz587FwsKCSpUqYWZ299H63kDTw0hLSyMwMJDFixcXOOZ6Z5blggULeOWVV9i0aRPLli3j/fffZ+vWrTzxxBOFtunt7c358+fZtm0bW7du5aWXXmLmzJns2rULc3PzMhm3EEWRGVBCCCGEEEKUIH/5XWuv1miKCuKcWgWhPSEjATzqYzV2KYUlITez0eH19nAcnp1ocv/5ibJ71PPE0docRVHYt3wRf377BTptHjWat2L4Z1/z5BsTsXOuaHSuvUtFnnxjItWbm7Yc6X6O/fqj1VhwMDmAo5v142jSw5ecNmmkW6QY1U23SCGrTTL1mvmiVbR8/PfHzAybifbO7ntxM2ehZGZi3agRDj176k/KSoFTq/W/L4Pld/msatbEqn59yM0lea0+ubNfI+Pd8Mw0agY2qQzcTfAuHg+VSoWNuY1Jr5aVWuJu415sInwPGw9aVmppUnv5y9tKw9bWlmrVqlGlShWj4FNhateuzfHjx0lPTzeU7du3D7VabUhSbmFhgfa+pbSNGzcmIiICNzc3qlWrZvRydLwbqG3UqBETJkxg//791K1bl99++63INkGfr6pXr1589dVX7Ny5kwMHDnDy5MlS3wMhSktmQAkhhBBCCFGC/ABUocvvFAV2z4Idn+jf1+wO/eeT9PUPANi0bk3FXs3Ju3Ies3MLsamYhar7kyb3nZ6dx/rwmwAMbupNXk4Om+Z+yfn9+jE16z2A1kOGo1Krqd68JVWbNtfvipd0GzunCnjVrlPqmU/3yrWvyPFW75GkrohapaNjSF1qNvegOf5kDcxl8eZdxN9KxtXFkVFBPbGyMEdR+uLj4MPXx75m4ZmFXEu9xmSbwaRs3AgqFe7vv3f3of/0asjNAJfqUKXwWRsPymlAf2JOnCBp5Uqcnx2Jf+MmHN+ykcvHDqMoCiqVfje8b3dcYk9EPNdvZ1C5woPlAhKPjkat4d1m7/LGzjeMZuPB3Rl57zR7p+hg8SM2bNgwJk2axIgRI5g8eTLx8fG8/PLLPPPMM7i7uwPg6+vL5s2bOX/+PC4uLjg6OjJs2DBmzpxJ7969+eijj6hcuTJXrlxh9erVvP322+Tm5jJv3jyefPJJKlWqxPnz54mIiGD48OGGNiMjIwkPD6dy5crY29uzZMkStFotzZs3x8bGhkWLFmFtbY2Pj8/jvEXi/4TMgBJCCCGEEKIY11Ovczn5MhqVhpZe980iysuGNS/cDT61GAeDF6GoLEhauwaACoMGYtt7NI6vzMS2fRAqNXDsV5P733gimvQcLX4VbanromH5xxM5v383ao2GoBdepc3QEFTqu3+tV6s1eNepT+1W7fCuU/+hgk+3bqSxcsZhktQVMc9NIzByITWa3E2wbmVhzqhenXk3pD+jenXGykK/hEelUvFc/ef4rO1nWKgt2HnlL8In6Hf8cho4EOs69+Siujf5+APMRCmOQ/ceqGxsyImMJPPoUbzr1MfMwpK0WwkkXI0CwMfFlpZVXVAUWHH4epn2L8pPZ5/OfNH+iwI7UrrbuPNF+y/o7NP5MY2sIBsbGzZv3kxiYiJNmzZlwIABdOrUiW+++cZQZ8yYMdSsWZMmTZrg6urKvn37sLGxYffu3VSpUoV+/fpRu3ZtRo0aRVZWFg4ODtjY2HDu3Dn69+9PjRo1eO655xg7dizPP6/Prda/f3+Cg4Pp0KEDrq6uLFmyBCcnJ3788UdatWpF/fr12bZtG7///jsuLi6P6/aI/yMyA0oIIYQQQohi5M9+aujWEAcLh7sHMhJh2dNwZR+oNNB9JjQdBUDajp1o4xPQuLhg37793XMaD4cz6+D4Uug8BcytSux/6Z3ldwOrmrPk/TdJjovF0taWJ994jyp165fZdd7vyulbbP7xFLlZWhzdrKm783Ms4y6Tvncvdu3amdRGN79ueNp6svKz5/CMTiXDSgUhPTBkWoo5BTeOgNoMGjxV5tegsbPFoVswyatWk7RiJZUCA6lStz6Xj4Zx+WgYrj5+gH5m2f5Lt1hx+BqvdKqORl22gTBRPjr7dKaDdweOxh0lPiMeVxtXGrs1LveZT6GhoaU+Vq9ePf76668iz3N1dWXLli0Fyj08PPjll18KPcfBwYE1a9YU2aalpSUr7yThv1efPn2KPEeI8iQzoIQQQgghhCjG7huFLL9LuAjzO+mDT5YOMGyFIfgEkLRC/9Dn2Kc3qnt2w8K/Azh6Q1YSnNtQYt8XYlM5ejUJn6wb5K2bQ3JcLE7ungz95PNyDT6d3Hmdjd8cJzdLi1cNJwa80wTPbm2Au7vKmaqehS/D9uh/v6SNihEHxrHr2i59Qf5MsJrdwc618AYektMA/a56KZs2oU1NvZsH6thhQ52gOh44WptzMzmLPRHx5TIOUT40ag1NPZrS3b87TT2a/mOW3QkhCpIAlBBCCCGEEEXIyM0gLFqfsLqt150AVNRe+KkzJF4Gxyrw7Gao1slwTm5sLGm79UErp/4DjBtUa6DR0/rfHy18VsO9loVdIyD1DL1iNpCbmUGlmgE89cksnCtVfviLK4ROp7B3eQS7l15AUaBWCw96vdIQK1tznAb0ByB1x07y4k0P0sR/9TUkp2JWrSrJ3Z8gMy+TV3a8wqKTC1COL9VXajyiPC4HAOuGDbGoVhUlK4uUjRvxb9wEgOgL58hM1SdRtzLX0LeRfnfBZZKMXAghyoUEoIQQQgghhCjCoZhD5OhyqGRbiapOVSF8CSzsA5m3wasJjNkO7gFG5ySvWQM6HTZNmmDp71ew0YbDABVE7tYHsYqQlZNL5B/L6JSwC5Wio3br9gz8YCo2Do5FnvMwcrLy+PP7kxz/Sx+AeaKPPx2H10Zjpn9ksKxeHeuGDSEvj+R160xqM+v8eW4v1QeZKr3/Ad8FfU//6v3RKTpmHP2CabYq8hwqQ9UO5XJNoM9HlT8LKmnFShwqulHR2wdF0RF1/Kih3uCm3gBsPRNLQlp2uY1HCCH+X0kASgghhBBCiCLk539q49UG1Y6psPYF0OVCQB8I2QB2xgmQFZ2OpJWrAHAaOOD+5vScvO/OmDq2qNAqudlZ/PLJR9S5dQSAJ/oPpdu4NzEzN3/4iypE2u0s1nx+lKgTCWjM1QSNqUtgsG+B7enzrylpxUoURSmsKQNFUYj9ZCrodNgHB2P7RHPM1eZMajGJNwLfQAUsdbDnZS8v0vIyy+W68jn27g3m5mSdPk3WmTP4Nb6zDO9omKFObU8HGng7kadTWH1UkpELIURZkwCUEEIIIYQQhVAUxRCAanvlCOyeqT/Q+g0YsADMrQuck3HwILnXr6O2t8e+a9eiG2+s3yadY4tBm2d0KO12IssmTyDt/DG0qKHdUFoNGlogGFRW4q+msvLTwyRcS8Pa3pw+rzeiWqBboXUdgoNR29iQc+UKmYcPF1onX+qmTWSEhaGyssL9rfGGcpVKxchK7fgiNh4rnY69WdEM3zSc6LToMr2ue5lVqIB9Z33QL2nlKvwb6ZfhRR0/ik6nNdQbcmcW1NKwayUG2IQQQpSOBKCEEEIIIYQoxIXbF4jNiMVKgWbnd+h3auv9LXSeBOrC/xptSD7eqydq64IBKoMa3cCmIqTFwMWthuL4K5H89t6bxF6OIFNtxdpKTzJoSJ+yvCwjkcfjWT3rCOnJOVTwtGXAO03w8C96iZ/a1haHHj2A4pOR6zIyiP1MH7BzGTMacy8v4wrHFtE5I5NQjQ8VrSsScTuCpzY+xamEUw9/UUXIX4aX/PvveFTxw8rWjqy0VKIvnDfU6dWgEjYWGi7Hp3P4yu1yG4sQQvw/kgCUEEIIIYQQhdh9Xr+UrllmJlaWDvDMmrsJxAuRd/s2qVv1waT8YEeRzCyg4VP63x9dCMDlY2Es+fBtUm/Fg6Mryyv1o2rdeng72zz8xdxHURTCt13lj+9Pkpejw7t2Bfq/HYhDxWKCZnfkL8NL2bQZbUpKoXVuzZ9PXnQ05pUq4TJqlPFBbZ5+5hdQJ/A5lvRYQo0KNbiVdYuRm0ay7cq2h7u4Iti2aIF5pUroUlNJ374d34aBgP6+57OzNKNnfU8Alh6SZORCCFGWJAAlhBBCCCHE/S79xe5TvwLQFhsYvR382hZ7Ssrvv6Pk5mIVEIBVQECxdQFodGcZ3oXNHFv3G2tnfExuViaVA+qxtvIAUswdDYmxy5JOq2PXkgvsW3kRFKjTphI9xjXA0trMpPOt6tXDskYNlOxskjdsKHA85/p1bs3/CQC3d99BbWVlXOHiVv3MLxsXqNkdD1sPFnZbSGuv1mRps3h95+v8fOrnMl8Cp1Krcbyzk1/SipWGZXiR9+SBAhjctAoAG0/eJCUrt0zHIIQQ/88kACWEEEIIIcS9joSS9NsgTphrAGg7YClUrF7sKYqiGJbfFZl8/H6uNdB5t+CvaB/++u03FEVHnfadcek/jmsZUMHGnC4B7g91KffLzsxjw7cnOL37Bqig1YBqtBtaE43G9McCo13lClmGFzdjBkpODjYtnsC+S5eCDdyZ8UWDp/QzwQBbc1u+7vg1T9XSzwqbfWQ2kw9MJldXtgEgp759Qa0mIywMzwquqFRq4q9GkZIQb6jTuIoT1d3syMrVsT78Zpn2L4QQ/88kACWEEEIIIQSATgdb3offX2WvlTk6lYpqjlXxdC15NlPWiRNkR0SgsrIy5EgqSU5mBusuVeHYbX1+pNZDhhP0wqssP6pPxt2vcWUszTQPfj33SUnIZPXMI1w7k4iZhZpuz9ejYecqD5Tc3PHJXqgsLMg+c5bM06cN5Wn79pG6dRtoNHhMnFiw7ZRouLBZ//v8ROx3mKnNmNh8Iu82exe1Ss3qiNW8uPVFkrOTSz2+oph7emLbpjUAOZs341m9JgCRx+4mVFepVIaZZ8vCZBmeKL2oqChUKhXh4eGPeyhC/KNIAEoIIYQQQoicdFj+DOz/GoDdvvrlWW2925l0ev5MIIegIDQODiXWT72VwNJJ73D50k3MVDp6ep2leUMP4tOy2X4uDqBMl9/FRCazcsZhEm+mY+NoQd83G+Pf0PWB29M4ORlmN+Vfu5KbS+y06QBUGDYUy+qFzBo7/hsoWvB+AlxrFtr2sNrD+Lrj19iY2XAw5iDP/PkM11LLLhBkmL21Zi1+DRoDxnmgQB/8M9eoOHkjmVM3yi4AJsqeotWSfvAQyRs2kn7wEIpWW/JJDykkJASVSoVKpcLc3Bw/Pz/efvttsrKyAPD29iY6Opq6deua3Gb79u157bXXymnEQvwzPNYA1PTp02natCn29va4ubnRp08fzp8/b1Snffv2hi93/uuFF154TCMWQgghhBD/ejotRO6Bkyv1vyZdhwXd4dwG0FiQ13ce+/ISAWhbufi8TwDatHSSN/4BFL78TqfTcu30Cc7u28W10yeIvniBxe+9QfyVSGwcnRgU5ENNhwQ4upBVR26g1Sk0ruJEDXf7B7s8ncKN87e5EBbDjfO3iQiLZe0Xx8hMzcWlsh0D322Cm0/JQbKS5F9r8pq1JK1eQ+z06eRcuoSmQgVcx40rbGBwVJ9X6/7ZT/drW7ktC7stxN3GncjkSIZtHEZ4XDhanZawmDD+uPwHYTFhaHWlDzbYt2+PxsUFbUICHndOv3rqOHk5OYY6zrYWdK3jAcBX2yNYF36DA5duodWVbV4q8XBStmzhYqfOXB0xgpvjx3N1xAgudupMypYt5d53cHAw0dHRXL58mdmzZ/PDDz8wadIkADQaDR4eHpiZmZZXTYj/F4/1G7Fr1y7Gjh1L06ZNycvLY+LEiXTt2pUzZ85ga2trqDdmzBg++ugjw3sbm7LfCUQIIYQQQvwfOLMeNr0DKffk9lGpQdHpk2IP+Y0TlhakhKfgYOFAA9cGJTaZuulPlIwMLHx9sQ4MNDoWcXA/f4XOIy0xocB5LpWr0PedSTjm3YR5v6GcWc8flk8CGobcSYRdWpeOxbFnWQTpSdkFjvnUc6HrqDpYWJXNI4A2ORk0GpSsLKInTjSU2xc1C+zKXrgdCRb2UKdPie3XdK7Jbz1+Y9z2cZxNPMvITSOxNbclOefujCR3G3febfYunX06mzxulbk5Tn37cGv+T6i378TOpSJptxK4duYkfg3vfn5VXfXPI1vOxLLlTCwAno5WTOoVQHBdT5P7E+UjZcsWbrz6GtyXrD4vNlZfPudLHLp2Lbf+LS0t8fDQBym9vb3p3LkzW7duZcaMGURFReHn58exY8do2LAhoH/2feuttzh+/DjOzs6MGDGCTz75BDMzM0JCQti1axe7du1izpw5AERGRuLo6Mi4cePYsmULaWlpVK5cmYkTJzJy5Mhyuy4hytNjnQG1adMmQkJCqFOnDg0aNCA0NJSrV69y5MgRo3o2NjZ4eHgYXg4mTGsWQgghhBDCyJn1sHy4cfAJ9MEngPYToMoT7L6+G4BWlVphpi45WHNv8vF7cx5FHNzP+i+mFRp8AmjWewCObu7g2RA86qHSZtM4eRu2Fhp61C99gOPSsTg2/XCq0OATQK0nPMss+JSyZQs3XnsdClnulLRsWeEzUPKTj9cbABa2BY8Xws3GjdDgUOq61CVPyTMKPgHEZcTxxs432HZlW6nG79hfvxte+t69+NbU5/i6fPSQ4fimU9F8vf1igfNikrN4cdFRNp2KLlV/omSKoqDLyDDppU1NJfaTqQWCT3caAhRip05Dm5pqUnsPu+PiqVOn2L9/PxYWFoUev3HjBt27d6dp06YcP36cuXPn8tNPP/HJJ58AMGfOHFq0aMGYMWOIjo4mOjoab29vPvjgA86cOcOff/7J2bNnmTt3LhUrVnyosQrxOP2j5gQmJ+v/h+Ls7GxUvnjxYhYtWoSHhwe9evXigw8+kFlQQgghhBDCdDqtfuYTRT1oqmDvbGjyLLtv6ANQbb1LXn6XdeECmcePg5kZjr173+1Op+Wv0HnFnrt36UJqtW6HWq2BxiPgj/EM0fxFToNR2FqW7q/pOp3CnmURxdbZtzIC/0auqNWlTzp+L0Wr1ed6KuahPXbadOw7dUKluZNEPSNRHwCEEpff3c9SY0l8ZnyhxxQUVKiYcWgGHbw7oFGblrTd0s8PmyZNyDh8GNeUDAAuHz1Mx5EKOgWm/H6m0J8UBVChP94lwAPNQ95LcZeSmcn5xoElVzSpMf1MqAtNm5lUvebRI6hK+Xy5YcMG7OzsyMvLIzs7G7VazTfffFNo3e+++w5vb2+++eYbVCoVtWrV4ubNm7zzzjt8+OGHODo6YmFhYZh4ke/q1as0atSIJk30Oel8fX1LNUYh/mn+MQEonU7Ha6+9RqtWrYyStQ0dOhQfHx8qVarEiRMneOeddzh//jyrV68utJ3s7Gyys+/+q09KSgoAubm55OaW7TauQgghhBDi30F1ZS9m9898MqJAyg2unV1LxO0I1Co1zd2al/j3x8TlKwCwbd8OxdHRUP/6mVNFznzKl3orgSsnT1A5oC4pvj2wVSZQW32NZ6rcKvXfW29GJBU58ylf2u1srp1LoFJ1p1K1fb+MsDDyYmKKrqAo5MXEkHLwIDZNmwKgDl+KRpuN4laXPNe6UIrrOxx7mNiM2KK7QyEmI4ZDNw/RxL2Jye3a9etLxuHDWO/cg8bTgZT4WGKvRHIxx5bo5Kxi+oPo5CwOXIyjuZ9zkfXKmzzbPF4dOnRg7ty5pKenM3v2bMzMzOh/Z2bd/c6ePUuLFi2MZki2atWKtLQ0rl+/TpUqhS+5ffHFF+nfvz9Hjx6la9eu9OnTh5YtW5bL9QjxKPxjAlBjx47l1KlT7N2716j8ueeeM/y+Xr16eHp60qlTJy5dukTVqlULtDN9+nSmTJlSoHzLli0ya0oIIYQQ4v+UV+IBTAlNLD20EtRQWV2Z/dv3F1tXlZeH/+rVaIDz3lU49scfhmOpUQWXbxVm386/sI+6yp4YFS11zemn2Yv131/xx81Uk87Pl3HTDLAusd7+XYewicgrVdv3sw8Px5QFgke2biU1Ph4UhfbnvsMROGnRiMg//yxVf8dzjptUb+uBrcRZxJncrkqrxd/KCs2Nm1j7VyIt9zablizisltDoOSZVFv2HOTW2ceXlDwjI+Ox9V0eVNbW1Dx6pOSKQMbhw1x77vkS63nP+wGbJiV/81XWJX937mdra0u1atUA+Pnnn2nQoAE//fQTo0aNKnVbRenWrRtXrlzhjz/+YOvWrXTq1ImxY8cya9asMutDiEfpHxGAGjduHBs2bGD37t1Urly52LrNmzcH4OLFi4UGoCZMmMAbb7xheJ+SkoK3tzddu3aV3FFCCCGEEP+nVFcc4MrcEutFuShwG3rV7UX3Ot2LrZu6aROxGRmYubvT7tVX7i43Qz8DavX+HSX216p9R7xq12Hud39zLa8D/TR78U09ROXOC8DCruQLuyNsQxSJx6+VWK9lu2YPPwPK1ZWbS5aWWC+wSxdsmjZFdfMoZuHXUDSW1B40idrWpevfLdaNFdtXlFivS4supZoBBRB/6jTJy5ZRHTOOAVZZ6XRt05yFEYdLPLdrm+aPdQZU/kqP/wqVSmXyMjjbVq0w8/AgLza28KWgKhVm7u7Ytmpl9L0sL2q1mokTJ/LGG28wdOjQAsdr167NqlWrUBTFMAtq37592NvbG55/LSws0BaSU83V1ZURI0YwYsQI2rRpw1tvvSUBKPGv9VgDUIqi8PLLL7NmzRp27tyJn59fieeEh4cD4OlZ+L+7WFpaYmlpWaDc3Nwcc3PzhxqvEEIIIYT4l/JvCw6VICWawvNAqchyqMShlEsAdKjSocS/O6atWQOAU//+WFhZGR3zqVcfG0cnMpKTijzf3qUiPvXqc/pmGudiUrEwC0Dr5IcmKRLzCxuh0dMlXpaiKIRtjOLY5pKDT3YVLPGuVfGhc0A5NG9OnAkP/w7Nm+sf/k/8pi8O6I25g2up+2tWqRnuNu7EZcShFJHDy8PGg2aVmpmcAyqf8+BBJC9bhtORcKjuxc0LZ+nlaYOnoxUxyVlF/KSAh6MVLaq5PdYcUP/PzzYqjQb3iRP0u92pVMY/h3cCPO4TJzyS4FO+gQMH8tZbb/Htt98yYMAAo2MvvfQSX375JS+//DLjxo3j/PnzTJo0iTfeeAO1Wr8vmK+vLwcPHiQqKgo7OzucnZ2ZPHkygYGB1KlTh+zsbDZs2EDt2rUf2TUJUdYe6y54Y8eOZdGiRfz222/Y29sTExNDTEwMmZmZAFy6dImPP/6YI0eOEBUVxfr16xk+fDht27alfv36j3PoQgghhBDi30StgeAZRRzUP7CGPTGSLG0W7jbu1KhQo9jmcq5fJ33/AVCpcOzXr2CLKjW2ThWKbaPDiOdQqzUsDbsKQHAdTzRNRugP5u8YVwxtro5tC84QtiESAL8Gxe+O1XpQ9YcOPsHdh3/9m/vau//hPzsNTup3CSxt8vF8GrWGd5u9q2+ewsf/dtO3Sx18ArAKCMAqIADrjCwcbe1RdDqunwpnUq+AO/0Zy38/qVeAJCB/zBy6dsVrzpeYubsblZu5u+M150scunZ9pOMxMzNj3LhxfPbZZ6Snpxsd8/Ly4o8//uDQoUM0aNCAF154gVGjRvH+++8b6owfPx6NRkNAQACurq5cvXoVCwsLJkyYQP369Wnbti0ajYalS0uefSjEP5VKedg9Jx+m8/v/h3XHggULCAkJ4dq1azz99NOcOnWK9PR0vL296du3L++//77Jy+lSUlJwdHQkOTlZluAJIYQQQvy/O7kSVt2Xo8XBC4I/ZWrKSZaeX8qAGgOY1GJSsc3EzZnDrbnfY9uqFVV+ml/g+MWwv1k36xPUGg3W9g6kJ902HLN3qUiHEc9RvXlLMnLyaD51O6nZefw2ujkt3bXwRW1QtPDS3+BW+GyHzLQc/vz+JNEXk1GrVbR9qgZ12nhx6Vgce5ZFGCUkt6tgSetB1anayK0UN6pkKVu2EDttulFCcjMPD9wnTrj78H/0V1g/Dpz94eWjBQNWpbDtyjY+PfRpoQnJp7WeRq+qvR6o3dtLlhAz5SMuBFTlojkEtO1It7FvsOlUNFN+P2OUkNzT0YpJvQIIrmtKFqzy9W9/zsnKyiIyMhI/Pz+s7ptBWBqKVkvG4SPkxcdj5uqKTZPARzrzSQhh+vf5sS/BK463tze7du16RKMRQgghhBD/eRXupHywdIAeX4C9B/i0RFGp2bP6OwDaerUttgklL4/k1XeW3w0cUOB4Xk4OOxf+CEDTJwfQctBQbpw9TVrSbeycKuBVuw7qO7N1/jgZQ2p2HlWcbXjC3wXUKqjZDc5t0AdvgqcVaP92TDobvj1BSnwmFtZmBD9XF+/a+lxEVRu54dfAleiIJNJTsrF1sMSzulOZzHy6n0PXrth36lT8w3/+TK5GzzxU8Amgs09nOnh34GjcUeIz4nG1cSU8Lpyvjn3F7COz6VilI7bmtqW/jp49iZ3xGS5XbnCxmheR4UdQdDqC63rSJcCDQ5GJxKVm4WZvRTM/Z5n59A+j0miwbd7scQ9DCGGCf0QSciGEEEIIIR6J6HD9r5WbQv2BhuLLSZe4kXYDC7UFzT2bF9tE2t695MXGoqlQAbuOHQscP7xhDclxsdg5u9C8z0DUag3edQpPH7HszvK7wU297waJGg/XB6COL4HOk8Dsbn7T6+dvs+mHk2Rn5OFQ0YoeYxvg7GkcdFGrVXjVLH75X1kp9uE/7ixcPwQqDTQsmJj5QWjUGpp6NDW8b+DagLUX13I19SrzTszj9cDXS9+mvT0OwcFo167FXK0mMyWZmEsReFaviUatokVVlzIZuxBC/L97rDmghBBCCCGEeKSij+t/9WxgVLz7+m4Amno0xca8+J24klbqcxo59u6N2sLC6FhKQjwH1y4HoN3Tz2JezFKEi3FphEXdRq2CAYH37ARdtRPYV4LMRDi30VB8dv9Nfp8TTnZGHh7+DvR/u0mB4NM/ytFf9b/WCNbPNCsHFhoL3mn2DgALzyzkSsqVB2rHaeAA1IBLsj53z+VjYWU1RCGEEHdIAEoIIYQQQvz/KCEA1aZym2JPz4uPJ23HTgCcBvQvcHz34gXkZWfjVasONVsWv5Rv+WH9znUda7nh7nBPoEpjBo2G6X9/dCGKTuHAmkv8tfAcOp1C9SZu9H69ETYOFoW0+g+Rl62fwQUPnHzcVG0rt6WNVxvydHl8FvbZA7Vh3bgxFn5+uN1OBeDyUQlACSFEWZMAlBBCCCGE+P+QlwNxZ/S/vycAlZKTwrG4Y4A+mFGcpLVrQavFulEjLKtVMzp2/cwpzu/fjUqlpuPI54vccAcgJ0/HqiPXARjStErBCo2e1g/50j42f3eIo5v1M3uadPely7N1MDP/hydZPrdRP4PL3hOqdS737t5u+jZmajN2X99tCCaWhkqlwmnAAFxTMwCIi7xE2u3Esh6mEEL8X5MAlBBCCCGE+P8Qfw60OWDpCBV8DcX7b+5Hq2jxc/TD2967yNMVRTEsv3MaYJx8XKfV8teC7wGo3zkYN1//Yoey/Wwst9JzcLO3pH1N14IVKviSUbk7axI/5tKpdNQaFZ1CatP8SX9U/4Yk2PnJxxsO08/oKme+jr48E/AMADMOzSBHm1PqNhz79MYSFY4Z+l3vIo8dLtMx/o+9uw6P6toaOPw7I3F3ISRAgia4u0NxKVDq3nvbfhXaIr0VqNHettS9vaVCDS/Q4u6uQUIgCRJ3z8j5/pgkEDJJJjjpep+Hh8w56+yzz6TQYWWvtYUQ4p9OElBCCCGEEOKfobz8rmWFHdk2nd0E1Lz7XcGuXRjiE9A4O+M2eFCFcwdXLyc1IQ4HZxe6Tbi7xqn8tstSfjeufT102sofydPP5THv+IOkGBpjr8lj5FMtado5sMZxbwqZcXBqneXrNjW/F1fLYy0fw8fRh4TcBH6K/qnW1+u8vXHt2xe/HMsqKCnDE0KIq0sSUEIIIYQQ4p/BSv8ns2pm87nNgA3ld6Wrn9yGDkXjfKH5d2FuDlt+tyQ8uk24B0dXt2rHOZdVyMaYVADGt6+84irhSDoL3t1Dbq4Wd10St3tNJkjZU8PD3UT2zbH83rA3eDW4brd11jszqd0kAL46+BUpBSm1HsNj3O34liag4g/tw2gwXNU5CiHEP5kkoIQQQgghxD9DeQKqdfmhw2mHySjKwEXvQhv/NlVeasrOJnfFSsCSpLjYlt9/pig/D9/6YbTsP7jGaczdfQZVha6NvAn1rriL3eGN51j62UFKikwERXhw+8DjeOgSYe8PNj7kDWY2wb6fLV9f4+bj1gxtOJRWvq0oNBbywZ4Pan29c9eueHt4YWcwYigq4tzRI9dglkII8c8kCSghhBBCCFH3mU2QdMjy9UUroMoaVncJ6oJeo6/y8uwlS1GLi7Fv0gSHyMjy4ylxpzi4ejkAfR54DI22+ubgJrPK3N2W5uMTOlxY/WQ2q2yeG8OGX46jmlWadA5gxFOtceh8hyXgxHLITbb9eW+Uk2sg9zw4ekLTYdf99hpFw7SO01BQWHpqaXlzeVspWi2eY8bgV9qM/NQ+KcMTddf69etRFIWsrKyrNubs2bPx8PC4auPZ4lo8h7g2JAElhBBCCCHqvrQYMBaC3hm8G5UfLktAVVd+p6oqWXPnApbm42W726mqytrvv0JVzTTp0oOQ5lE1TmPzyTTOZRXi7qhnUIsAAEqKjPz95SEOrLH0heo0oiH97muGVq8Bv2ZQryOYjXDg18t79uupbKVWq4mgs78hU2jh04IxEWMAmLljJiazqVbXe4wZjW9OIQCndm676vMTV5fZrHLueCYndiVx7ngmZrN6Te+XmprKv//9b+rXr4+9vT0BAQEMGjSILVu2lMcoisKiRYuuyv3i4uJQFIX9+/dflfEu1rVrVxITE3F3d7/qY4vLV5cTatd+SwohhBBCCCFutLLyu4Ao0FhWKaUWpHI04ygA3YO7V3lp0eEjFB8/jmJnh/vwC6t6jm/dyLljR9DZ2dPz7gdtmsbvuxIAGN0mGAe9lrzMYpZ9foC0M3lodRr63d+MiPb+FS9qey+c3WnZWa7b0xUaqN9UcpMtK7UA2txzQ6fyf23+j5VxKzmacZSFJxdye+Pba76olD44mNDIluzPSSIrLYXMxHN4BgZfw9mKyxW7L4VNv8eQn1VcfszZw54eEyJo1Mbvmtxz7NixlJSU8MMPP9CwYUOSk5NZs2YN6enptRqnpKQEOzu7azJHW9nZ2REQEHBD5yD+WWQFlBBCCCGEqPusNCDfdM6y+12kdyQ+jj5VXlrWfNx14EC0paUlhqIiNvz8PwA6jRqHm49vjVNIyytmVbSljG5ChxBSz+Qy753dpJ3Jw9FVz6hJbSonnwBajAY7F8iIhfitNd7nhjnwq2WlVr0O4N/8hk7F29Gbx1s/DsDHez8muzi7Vtf7jhuPV37pKqjdO676/MSVi92XwvKvDldIPgHkZxWz/KvDxO6rfRP6mmRlZbFp0ybeeecd+vTpQ2hoKB07dmTatGmMGDECgLCwMABGjx6Noijlr6dPn07r1q359ttvadCgAQ4ODgAsX76c7t274+Hhgbe3N8OGDSM2Nrb8ng0aWBr5t2nTBkVR6N27d/m5b7/9lmbNmuHg4EDTpk35/PPPK8x369attG7dGgcHB9q3b8+iRYsqrKayttJmy5Yt9O7dGycnJzw9PRk0aBCZmZlVviezZ8+mfv36ODk5MXr0aKuJuMWLF9O2bVscHBxo2LAhM2bMwGg0AnDnnXcyYcKECvEGgwEfHx9+/PFHAMxmMzNnzqRBgwY4OjrSqlUr5pX+vVyV+fPn06JFC+zt7QkLC+P999+vcD4sLIzXX3+diRMn4uzsTHBwMJ999lmFGEVR+Oqrrxg2bBhOTk40a9aMbdu2cfLkSXr37o2zszNdu3at8P2q6XnLxv32228ZPXo0Tk5ORERE8OeffwKWFW99+vQBwNPTE0VRuP/++wGYN28eUVFRODo64u3tTf/+/cnPz6/2fbjZSAJKCCGEEELUfRcloExmE7uSdvHH8T+A6lc/mQsKyFm6FLCU35XZsWgueRnpuPv50374mGpvbTCaWbkung+/209AkULLYDccU0tY8N5e8rOK8Qxw4vYp7QloWEUZjL0LRI61fL33Rxsf+Doxm+D0Jjg4F3Z8ZTl2A5qPWzOh6QQauTcisziTLw58UatrXfv2wb/034sHF81j7ycfcmLeH5gMJddgpgIsJa2GYpNNv4oLjWz6/US14236PYbiQqNN46mqbWV7Li4uuLi4sGjRIoqLi63G7Npl6Rv2/fffk5iYWP4a4OTJk8yfP58FCxaUJ4Hy8/OZNGkSu3fvZs2aNWg0GkaPHo3ZbAZg586dAKxevZrExEQWLFgAwJw5c3jllVd48803OXr0KG+99RYvv/wyP/xgKYPNyclh+PDhREVFsXfvXl5//XWmTJlS7fPt37+ffv360bx5c7Zt28bmzZsZPnw4JpP1MtYdO3bw0EMP8eSTT7J//3769OnDG2+8USFm06ZN3HvvvTz99NNER0fz1VdfMXv2bN58800A7rrrLpYsWUJeXl75NStWrKCgoIDRo0cDMHPmTH788Ue+/PJLjhw5wrPPPsvdd9/Nhg0brM5rz549jB8/njvuuINDhw4xffp0Xn75ZWbPnl0h7t1336VVq1bs27ePqVOn8vTTT7Nq1aoKMa+//jr33nsv+/fvp2nTptx555089thjTJs2jd27d6OqKk8++aTNz1tmxowZjB8/noMHDzJkyBDuuusuMjIyCAkJYf78+QAcP36cxMREPvroIxITE5k4cSIPPvggR48eZf369YwZM8bm/3ZvFop6q824lnJycnB3dyc7Oxs3t+q3xBVCCCGEEHWQ2QzvhEJxDqtHf8DbJ34hueBCQ28vBy9e7vwy/UP7V7o0a8FCEl98EX39+jRa/jeKRkNWUiKzn/s3JqOREc//h4gOXaq89bzFxzm18izOpgtlc8WKir1qeV2vqSeDH43E3qnqBugAnN0D3/YFnQM8dxwcPWr3HlwL0X/C8imQc/6igwqM+Rpajr9h07rYtvPbeHTVo2gVLXOHzyXCM8Lma9c8cDf7C7IqHHMwmek+cBitHn38Ks+09m71f+cUFRVx+vTp8tVAhmITXz9tPaFwrT36US/09tVvIFBm/vz5PPLIIxQWFtK2bVt69erFHXfcQcuWLctjFEVh4cKFjBo1qvzY9OnTeeuttzh37hy+vlWvmExLS8PX15dDhw4RGRlJXFwcDRo0YN++fbRu3bo8Ljw8vHwFT5k33niDv/76i61bt/Lll1/y0ksvcfbs2fLVVt9++y2PPPJI+Vjr16+nT58+ZGZm4uHhwZ133klCQgKbN2+26b248847yc7OZtmyZeXH7rjjDpYvX16+qqp///7069ePadOmlcf8/PPPTJ48mfPnz2M0GgkMDGTWrFncc8895eOazWZ+++03iouL8fLyYvXq1XTpcuHv2ocffpiCggJ++eWXSs9x1113kZqaysqVK8vjJ0+ezLJlyzhyxLKzZVhYGM2aNePvv/+uMPecnBz++usvwPJ9fOmll3j99dcB2L59O126dOG7777jwQctZde//fYbDzzwAIWFhTY9r7Vx8/PzcXFx4e+//2bw4MGVngdg7969tGvXjri4OEJDQ236/lxPl/55roqsgBJCCCGEEHVb5mlL8snFjUn7P6yQfALILMpk0vpJrI5fXenSsvI7j7FjUTSWj87rf/oOk9FIaMs2hLfvXOVt5y0+TtLfZ3G6ZPFAWfLJoZ4Tw/6vVc3JJ4DgtuDXAoxFcGhuzfHXWvSf8Me9lySfAFRY8Kjl/E2gS1AX+tfvj0k18c7Od2xeLXDg68/Zn58Jl8QXaRRWr17Gga8/r+JKUdeNHTuW8+fP8+eff5YnC9q2bVtpdY01oaGhlZJPMTExTJw4kYYNG+Lm5lZespeQkFDlOPn5+cTGxvLQQw+Vr8pycXHhjTfeKC8HO378OC1btqyQDOjYsWO18ytbAWWro0eP0qlTpwrHLk4SARw4cIDXXnutwjwfeeQREhMTKSgoQKfTMX78eObMmVP+bIsXL+auu+4CLKvGCgoKGDBgQIUxfvzxx0qlbxfPq1u3bhWOdevWjZiYmAqruS6da5cuXTh69GiFYxcnFv39LSXSUVFRFY4VFRWRk5Nj0/NaG9fZ2Rk3NzdSUqouG23VqhX9+vUjKiqKcePG8c0331RbGnmzkibkQgghhBCibks8gAl428cLFXOl0yoqCgrv7HyHPiF90JY2KS+OjaVw717QanEvXckQt38Psbu3o9Fq6XPfo+U74l3KYDRzauVZnACFyjEqKumJ+ZhVsGndhaJYStuWT7GU4XV8xLZnvxbMJss8qCaZs3wqNB1a3vD9Rnq+w/NsOreJHUk7WJ2wmgGhA6qNNxlK2LxyKWiUyg3fFQVUlc0rlxL5wMNo9Te2iXRdorPT8OhHvWyKPR+TxdJPD9QYN+zJVgRFeNh079pwcHBgwIABDBgwgJdffpmHH36YV199tbxXT1WcnZ0rHRs+fDihoaF88803BAUFYTabiYyMpKSk6nLPsnK1b775plICSKu9/D9zjo6Ol31tVfLy8pgxYwZjxlQuVS5Ljt1111306tWLlJQUVq1ahaOjI4MHDy6/HmDZsmUEB1fcDMDe/trvtKnXX/gBQdnf99aOlZVM2vK8l45RNk7ZGNZotVpWrVrF1q1bWblyJZ988gn/+c9/2LFjR3mfsFuBrIASQgghhBB1W+IB9jrYk6xU/eFeRSWpIIm9KXvLj2XNs/ThcOnVC72/HyajgbU/fANAm8HD8K4XUuV46zadwdmkWE0+gSUp5WxSWLfpjO3P0XI8aO0h6SCc32/7dVdb/FYrK58upkLOuZumYXqwSzAPRD4AwLu73qXQWFhtfOziRRRpNVXvNqgoFGk1xC5edJVn+s+mKAp6e61Nv0Kae+HsUX3ywcXTnpDmXjaNV1Ui2VbNmzev0Axar9dX2TfpYunp6Rw/fpyXXnqJfv360axZs0qrWsp2yrt4PH9/f4KCgjh16hTh4eEVfpUlI5o0acKhQ4cq9Kq6uB+VNS1btmTNmjU1P3CpZs2asWNHxSb927dvr/C6bdu2HD9+vNI8w8PD0ZSuKu3atSshISH8/vvvzJkzh3HjxpUnaJo3b469vT0JCQmVrg8Jsf53cLNmzdiyZUuFY1u2bKFx48YVEnSXznX79u00a9bM5ue3xpbnrYm17zlY/ox069aNGTNmsG/fPuzs7Fi4cOEVzfd6kxVQQgghhBCibks8QKqNqwJSC1IBUEtKyF60CLjQfHzf8qVknj+Lk7sHXW6/s9px0tMKqj1f2zgAnLyg2XA4PM+yCiqote3XXk15yTXH1CbuOngw8kEWnVxEYn4isw/P5t+t/11lbF5idcm12seJq0+jUegxIYLlXx2uMqb7+Ag0mitLLF0qPT2dcePG8eCDD9KyZUtcXV3ZvXs3//3vfxk5cmR5XFhYGGvWrKFbt27Y29vj6elpdTxPT0+8vb35+uuvCQwMJCEhgalTp1aI8fPzw9HRkeXLl1OvXj0cHBxwd3dnxowZPPXUU7i7uzN48GCKi4vZvXs3mZmZTJo0iTvvvJP//Oc/PProo0ydOpWEhATee+89gCoTbtOmTSMqKorHH3+cf/3rX9jZ2bFu3TrGjRuHj0/lnUKfeuopunXrxnvvvcfIkSNZsWIFy5cvrxDzyiuvMGzYMOrXr8/tt9+ORqPhwIEDHD58uELD8jvvvJMvv/ySEydOsG7duvLjrq6uPP/88zz77LOYzWa6d+9OdnY2W7Zswc3Njfvuu6/SvJ577jk6dOjA66+/zoQJE9i2bRuffvpppV0Ct2zZwn//+19GjRrFqlWrmDt3boV+VpfD1uetTmhoKIqisHTpUoYMGYKjoyNHjhxhzZo1DBw4ED8/P3bs2EFqauoVJ8yuN1kBJYQQQggh6i5VhcQD+NqwGgHA18nSnyV37TpMmZnofH1x6dmD/KxMts37BYDuE+/F3qlyKc3FvH2cbLqfrXHlynaYOzQXSmqRvLqaXPyvbtx14Khz5Pn2zwPw3eHvOJ9XdfLIJTDIpjFtjRPXRqM2fgx+LLLSSigXT3sGPxZJozZ+V/2eLi4udOrUiQ8++ICePXsSGRnJyy+/zCOPPMKnn35aHvf++++zatUqQkJCaNOmTZXjaTQafvvtN/bs2UNkZCTPPvss7777boUYnU7Hxx9/zFdffUVQUFB5ouvhhx/m22+/5fvvvycqKopevXoxe/bs8hVQbm5uLFmyhP3799O6dWv+85//8MorrwBU2SS6cePGrFy5kgMHDtCxY0e6dOnC4sWL0emsr1vp3Lkz33zzDR999BGtWrVi5cqVvPTSSxViBg0axNKlS1m5ciUdOnSgc+fOfPDBB5Uaad91111ER0cTHBxcqX/T66+/zssvv8zMmTNp1qwZgwcPZtmyZVWWnrVt25Y//viD3377jcjISF555RVee+21SiWSzz33HLt376ZNmza88cYbzJo1i0GDBlkd01a2Pm91goODmTFjBlOnTsXf358nn3wSNzc3Nm7cyJAhQ2jcuDEvvfQS77//PrfddtsVzfd6k13whBBCCCFE3ZV1Bj6MxKTRMahZa5ILrDd5VVDwd/Jn+djlaDVaEh5+hPzNm/F+7DH8nn2G5V98yJH1qwloFMGdb7xf3pDcGlVV+XztSXLmxeOqWi/DU1Ep0MKzH/VBr6vFz4TNZvikDWTGwagvofXEGi+56nKS4KNIMBmqCFDALQieOXRT9IAqo6oqD618iF1JuxgQOoBZvWdZjTMZSvhy4iiKrPWAsgyEg1nlX78uuqE9oG71f+fYumtWTcxmlcSYLPJzinF2sycwwuOqr3yqK+bMmcMDDzxAdnb2Nen3dCsJCwvjmWee4ZlnnrnRU6kTZBc8IYQQQgghEi2NirW+zZjacZrVkLIE0ZSOU9BqtBjOnSO/tH+Ix9gxJJ48zpH1lh3y+j7wr2qTTyVGM1PnH+LdVSeItjOhoKBe0qy77HXDgfVql3wC0GigjWWrcvb+WLtrr4aUY/C/AdUnnwAGv31TJZ/AUnY0teNUNIqGVfGr2JG4w2qcVm9H94HDLC8u/Vl96evuA4dJA/KbhEajENzEk8YdAghu4inJp4v8+OOPbN68mdOnT7No0SKmTJnC+PHj//HJJ3HjSAJKCCGEEELUXaUJKAJb0T+0Pw3cKpds+Dv5M6v3LPqH9gcga8FCUFWcOndGX68ea7//CoAWvfoTGNGkyltlFxi4//ud/L77DHqgi97yjzzDJf8eLtBCwG31uH1k1WNVq/VdoGggYSukxVzeGJcjdi18NwCyEsCzAdz2X8tKp4u5BcH4H6H5iOs3r1po7NmYCU0mAPD2zrcxmo1W41o9+jj9+w/FwVwxAeVgVunffyitHn38ms9ViCuVlJTE3XffTbNmzXj22WcZN24cX3/99Y2elvgHkybkQgghhBCi7rooAXUq6xSnc06jQcO7vd7FaDbi6+RLW7+2aEtX66gmE1kLFgCW5uNHNq4l6eQJ7Bwd6XFn5Wa3ZeLT83lg9i5OpebjbKfl1fB6pG5Nwdndjgde7sjmXYmkpxXg7eNEnx4htV/5dDG3QIgYBCf+tqyCGvj65Y9lqz2zYekkUE1QvwtMmAPO3tDhYctud3nJlp5PoV1vupVPl3qi9RP8ffpvTmad5Pfjv3NXs7usxrV69HEiH3iY2MWLyEs8j0tgEI1GjpKVT+KWMXnyZCZPnnyjp3FTiouLu9FT+EeSBJQQQgghhKi7LkpALYixJJZ6hvRkYNhAq+H5W7diTExE4+6OXbcubJryFABdxk7E2cP6Tla74zJ49Kc9ZOSXEOjuwGejW7Hrc8vuXF3HhuPkYsfAPrY3oLVJ23stCagDv0Lfl0F3jZIiZjOsfgW2fmJ53XICjPgEdKWNnzVaaNDj2tz7GnG3d+f/2vwfr29/nc/2f8ZtDW7Dy8HLaqxWb0fj28df5xkKIUTdJCV4QgghhBCibspNgrwkQMHg24Q/Y/8EYGzE2CovyZo7DwD3ESPYsXQhBdlZeAbVo81tw63GL95/jju/2UFGfglRwe4sfqIbaVuSMZaYCWzkTkSHa7QTXMRAcAmA/FQ4sbzm+MtRkg9/3HMh+dT7RRj91YXk0y1sbMRYmno1Jbckl0/2fXKjpyOEEP8IkoASQgghhBB1U+JBy+8+jVmXvJPM4kx8HX3pHtzdargxPZ3ctWsBUHv1YN/floRVn/seQavTV4hVVZWPVsfw9G/7KTGZGdjcn98f64wxuYiYXcmgQI8JjVGs7aJ2NWh10PpOy9fXohl5TiJ8PwSOLQWtHYz5FnpPsb4r3C1Iq9EyrbQp/fwT8zmSfuQGz0gIIeo+SUAJIYQQQoi6yUr53ajwUeg01rtQZC9aDEYj9q2i2LJhJWaTiUbtO9GgdbsKccVGE5P+OMAHq08A8GjPhnx5dzscdFo2/m451qJ7EL71Xa/Rg5Vqc7fl95OrIfvs1Rs36RB82w8S94OTN9y3BFqOu3rj3yTa+rdlSIMhqKjM3DET9dId74QQQlxVkoASQgghhBB1U+J+AM75NGTr+a0AjA4fbTVUVVWy5lnK73K7diL+4D60Oh2973m4QlxGfgl3f7uDhfvOodUovDU6iheHNEOjUYjefJ70s3nYO+noNLLhtXuuMt6NIKwHoMK+OVdnzBMr4X+DIecceEfAw6uhfuerM/ZNaFK7STjqHDmQeoClp5be6OkIIUSdJgkoIYQQQghRN5WW4C0yZ6Gi0imgEyFuIVZDC/fupeT0aczOTuyKiQag/fAxeAQElsfEpuYx+vMt7IrLxNVex+wHOnBnp/oAFOUb2L44FoCOwxvi6HKddkprW7oz376fwGy6srF2fA2/ToCSPEti6+FV4HUdEmk3kL+zP4+2fBSAD/Z8QL4h/wbPSNQF06dPp3Xr1jbHx8XFoSgK+/fvv2ZzupXMnj0bDw+PGz2NCi7ne6QoCosWLbJ6/fr161EUhaysrKs+15uZJKCEEEIIIUTdU5AB2QmYgIWpuwEYEzGmyvCy5uPnO7UlOzUZFy9vOo66UHa2NTaN0Z9tIT69gHqejix4vCs9InzLz+/88xTF+Ua8gpyJ7Bl0bZ7JmmbDwcEDss/AqfWXN4bZBH9Nhr9fANVsKe27ewE4Wt/1r665p/k9hLiGkFqYytcHv77R0xE3seHDhzN48GCr5zZt2oSiKBw8eJDnn3+eNWvWXOfZ1R0TJkzgxIkTV228+++/n1GjRl3RGCEhISQmJhIZGWnzNYmJidx2221Wz3Xt2pXExETc3d2vaF63GklACSGEEEKIuqe0/9NW3zCSC1Nws3OjX2g/q6Gm3Fxyli+nUK8lOicNgJ53P4idgyMAf+w+w73f7SSnyEib+h4sfLwbEf4X+julnc3j8MZzgKXxuEZ7HT9i6x2g5QTL15fTjLw4F36dCDu/srzuPx1GfAq667SC6yZgr7VncofJAPwY/SPxOfE3eEaiNsxmE2eOHOTolg2cOXIQ85WuBKzGQw89xKpVqzh7tnLPte+//5727dvTsmVLXFxc8Pb2vmbzqOscHR3x8/O70dOoQKvVEhAQgE5nvYegNQEBAdjbW9811M7OjoCAgGu3UcVNShJQQgghhBCi7ilNQC1wcwNgeKPh2Gut/0MgZ9ky1KIiYhqHYTQYCG7anKZde2I2q/x3+TEmzzuI0awyrGUgvz7SGV/XC+Ooqsqm30+gqtCorR/1mtyAVUNt77X8fmwZ5KfZfl32WUu/p5gVoHOAcT9A92frzE53tdGrXi+6BXfDaDby313/vdHTETaK2bGVb554iD9ee5G/Pn6XP157kW+eeIiYHVuvyf2GDRuGr68vs2fPrnA8Ly+PuXPn8tBDDwGVS/DMZjOvvfYa9erVw97entatW7N8+fJq73X48GFuu+02XFxc8Pf355577iEt7cKf7969e/PUU08xefJkvLy8CAgIYPr06RXGyMrK4rHHHsPf3x8HBwciIyNZuvRCr7PNmzfTo0cPHB0dCQkJ4amnniI/v+oy1NjYWEaOHIm/vz8uLi506NCB1atXV4hJTExk6NChODo60qBBA3755RfCwsL48MMPy2NmzZpFVFQUzs7OhISE8Pjjj5OXl1d+/tISvLL386effiIsLAx3d3fuuOMOcnNzy2PmzZtHVFQUjo6OeHt7079/f/Lz85k+fTo//PADixcvRlEUFEVh/fr1Vp/PbDbz3//+l/DwcOzt7alfvz5vvvkmULGEzmw2U69ePb744osK1+/btw+NRkN8vCWJfXEJ3qUuLcFLT09n4sSJBAcH4+TkRFRUFL/++muFa2r6nquqyvTp06lfvz729vYEBQXx1FNPWb3/jSIJKCGEEEIIUfckHiBNo2G9ORuouvk4WMrvMpwdOKsDRdHQ94F/UWw083+/7uPz9Za+Tv/XN5yP72iDg15b4dqTe1I4H5OFTq+h69hG1+55qhMQCUFtwWyAA7/Zds25vfBNX0g+DM5+cP9f0GLUNZ3mzUxRFKZ0mIJO0bHx7EY2nt14o6ckahCzYyt/znqLvIyKSde8jDT+nPXWNUlC6XQ67r33XmbPnl1h18S5c+diMpmYOHGi1es++ugj3n//fd577z0OHjzIoEGDGDFiBDExMVbjs7Ky6Nu3L23atGH37t0sX76c5ORkxo8fXyHuhx9+wNnZmR07dvDf//6X1157jVWrVgGWZMptt93Gli1b+Pnnn4mOjubtt99Gq7X8HRYbG8vgwYMZO3YsBw8e5Pfff2fz5s08+eSTVT5/Xl4eQ4YMYc2aNezbt4/BgwczfPhwEhISymPuvfdezp8/z/r165k/fz5ff/01KSkpFcbRaDR8/PHHHDlyhB9++IG1a9cyefLkat55y3wXLVrE0qVLWbp0KRs2bODtt98GLEmviRMn8uCDD3L06FHWr1/PmDFjUFWV559/nvHjxzN48GASExNJTEyka9euVu8xbdo03n77bV5++WWio6P55Zdf8Pf3rxSn0WiYOHEiv/zyS4Xjc+bMoVu3boSGhlb7LNYUFRXRrl07li1bxuHDh3n00Ue555572LlzZ4W46r7n8+fP54MPPuCrr74iJiaGRYsWERUVVeu5XFNqHZedna0CanZ29o2eihBCCCGEuF4+aqP+b1awGjk7Up24dGKVYYVHjqiHmzRVvxoxQH1v/FB11Tefqik5RerITzeroVOWquEvLlPn7j5j9dqSIqM6e+pm9dPH1qg7l566Vk9im13/U9VX3VT1kw6qajZXHxu9RFVf97fEf9ZZVTPjr88cbwHv7XpPjZwdqQ5dMFQtNhbf6OlU61b/d05hYaEaHR2tFhYWqqqqqmazWS0pLLTpV1F+nvrlY/eq740fWuWvL/91r1qUn2fTeOaa/sxc5OjRoyqgrlu3rvxYjx491Lvvvrv89auvvqq2atWq/HVQUJD65ptvVhinQ4cO6uOPP66qqqqePn1aBdR9+/apqqqqr7/+ujpw4MAK8WfOnFEB9fjx46qqqmqvXr3U7t27VxpzypQpqqqq6ooVK1SNRlMef6mHHnpIffTRRysc27Rpk6rRaMq/J7Zo0aKF+sknn6iqeuG92bVrV/n5mJgYFVA/+OCDKseYO3eu6u3tXf76+++/V93d3ctfv/rqq6qTk5Oak5NTfuyFF15QO3XqpKqqqu7Zs0cF1Li4OKvj33ffferIkSOrfY6cnBzV3t5e/eabb6yev/R7tG/fPlVRFDU+3vL3p8lkUoODg9Uvvvii/BpAXbhwodXr161bpwJqZmZmlXMaOnSo+txzz5W/rul7/v7776uNGzdWS0pKqn3Wa+HSP89Vsb2AUQghhBBCiFtBUQ5qRiwLgi072FXbfHzefM54u5HrYIeDswv+fUYx6rMtnMsqxN1Rz1f3tKNzQ+u9XPauiCcvsxhXLwfaDKh/TR7FZpFjYcWLkHYczuyE+p0qx6gqbP0EVr0CqBDeH27/Hhzcrvt0b1aPtXyMJbFLiM+J5+ejP/Ng5IM3ekr/GMbiYj6+7/arNl5eRjqfPjDBptinfpiH3sHBptimTZvStWtX/ve//9G7d29OnjzJpk2beO2116zG5+TkcP78ebp161bheLdu3Thw4IDVaw4cOMC6detwcXGpdC42NpbGjRsD0LJlywrnAgMDy1cb7d+/n3r16pXHWrvHwYMHmTNnTvkxVVUxm82cPn2aZs2aVbomLy+P6dOns2zZMhITEzEajRQWFpavgDp+/Dg6nY62bduWXxMeHo6nZ8XS5NWrVzNz5kyOHTtGTk4ORqORoqIiCgoKcHJysjrfsLAwXF0v9N67+FlbtWpFv379iIqKYtCgQQwcOJDbb7+90n2rc/ToUYqLi+nXz3qvwEu1bt2aZs2a8csvvzB16lQ2bNhASkoK48aNq/liK0wmE2+99RZ//PEH586do6SkhOLi4krvR3Xf83HjxvHhhx/SsGFDBg8ezJAhQxg+fHit+lZda1KCJ4QQQggh6pakQ+y1tyfOTo+jzpHbGljfhchcVETqsqWcCPACwK/PKO788TDnsgoJ83Zi4eNdq0w+ZacWsm+l5R9d3caFo7PTWo27bhzcoEVpos1aM3KTAZY+A6teBlRo/xBM/F2ST5dwsXPh2XbPAvDVga9IKUip4QrxT/TQQw8xf/58cnNz+f7772nUqBG9evW6auPn5eUxfPhw9u/fX+FXTEwMPXv2LI/T6/UVrlMUBbPZDFgaedd0j8cee6zC+AcOHCAmJoZGjayXEz///PMsXLiQt956i02bNrF//36ioqIoKSmx+dni4uIYNmwYLVu2ZP78+ezZs4fPPvsMoNpxqntWrVbLqlWr+Pvvv2nevDmffPIJTZo04fTp0zbPq6b3y5q77rqrvAzvl19+YfDgwZfdfP7dd9/lo48+YsqUKaxbt479+/czaNCgSu9Jde9DSEgIx48f5/PPP8fR0ZHHH3+cnj17YjAYLmtO18LNkwoTQgghhBD/SGazSmJMFvk5xTi72RMY4YFGcwWNsBMPsMDVGYDbGtyGs965wumS4mI2fP8LhXt2kO3piEGnRecTxLRoF4yqkY5hXnx1Tzs8naveCW7LvBhMRjP1mnrSsLXv5c/1amp7L+z/GQ7Ph2YjoCQXXPzBrznMfxBOrQcUGPQWdP73P7LZuC2GNxrOH8f/4GDaQT7Y/QFjGo8htSAVXydf2vq1Rau5wcnGOkpnb89TP8yzKfbs0cMseHt6jXFjpk6nXrNIm+5dG+PHj+fpp5/ml19+4ccff+Tf//53lbuZubm5ERQUxJYtWyokqbZs2ULHjh2tXtO2bVvmz59PWFjYZa9eadmyJWfPnuXEiRNWV0G1bduW6OhowsPDbR5zy5Yt3H///Ywebempl5eXR1xcXPn5Jk2aYDQa2bdvH+3atQPg5MmTZGZmlsfs2bMHs9nM+++/j0ZjWQ/zxx9/XM4jVqAoCt26daNbt2688sorhIaGsnDhQiZNmoSdnR0mU/W7I0ZERODo6MiaNWt4+OGHbbrnnXfeyUsvvcSePXuYN28eX3755WXPf8uWLYwcOZK7774bsPTwOnHiBM2bN6/VOI6OjgwfPpzhw4fzxBNP0LRpUw4dOlRhVdqNJAkoIYQQQghxw8TuS2HT7zHkZxWXH3P2sKfHhAgatbm8bbhzzu9hpbOlbOHS8rtFb77LmT1rKSlrJu5uKXGJz9RidFUY0yaYmWOjsNdVnWRIiE7n9IE0FI1C9/ERN8822iEdwTUIcs/Drxc1K9bowGwEvTPc/h00sb4iTFhoFA3TOk1j4rKJLD29lKWnL+wa5u/kz9SOU+kf2v8GzrBuUhTF5jK40FZtcPHyqdSA/GKu3j6EtmqD5hokDF1cXJgwYQLTpk0jJyeH+++/v9r4F154gVdffZVGjRrRunVrvv/+e/bv31+h/O1iTzzxBN988w0TJ04s3/Hs5MmT/Pbbb3z77bfljcSr06tXL3r27MnYsWOZNWsW4eHhHDt2DEVRGDx4MFOmTKFz5848+eSTPPzwwzg7OxMdHc2qVav49NNPrY4ZERHBggULGD58OIqi8PLLL5evvgFLeWL//v159NFH+eKLL9Dr9Tz33HM4OjqW/z0ZHh6OwWDgk08+Yfjw4WzZsuWKEjcAO3bsYM2aNQwcOBA/Pz927NhBampqeRlhWFgYK1as4Pjx43h7e+Pu7l5pJZGDgwNTpkxh8uTJ2NnZ0a1bN1JTUzly5Ej57oaXCgsLo2vXrjz00EOYTCZGjBhx2c8QERHBvHnz2Lp1K56ensyaNYvk5ORaJaBmz56NyWSiU6dOODk58fPPP+Po6HhZTdGvFSnBE0IIIYQQN0TsvhSWf3W4QvIJID+rmOVfHSZ23+WVP/2dtp8ijYZwR39a+lzol7HozXeJPbCeEt0lH4FVlWBjAk8V7eL98a2qTT6ZTGY2/2HZuapl73p4B1Xu0XLDHF1iST5dymy0/N57qiSfbJSUn2T1eEpBCpPWT2J1/Gqr58X1odFo6Xv/o9XG9Lnv0WuSfCrz0EMPkZmZyaBBgwgKCqo29qmnnmLSpEk899xzREVFsXz5cv78808iIiKsxpetmDKZTAwcOJCoqCieeeYZPDw8ylcN2WL+/Pl06NCBiRMn0rx5cyZPnly+Eqhly5Zs2LCBEydO0KNHD9q0acMrr7xS7bPMmjULT09PunbtyvDhwxk0aFCllTU//vgj/v7+9OzZk9GjR/PII4/g6uqKQ2lysVWrVsyaNYt33nmHyMhI5syZw8yZM21+Jmvc3NzYuHEjQ4YMoXHjxrz00ku8//773Hab5e+7Rx55hCZNmtC+fXt8fX3ZsmWL1XFefvllnnvuOV555RWaNWvGhAkTKu3gd6m77rqLAwcOMHr06Msq4yvz0ksv0bZtWwYNGkTv3r0JCAhg1KhRtRrDw8ODb775hm7dutGyZUtWr17NkiVLLrss8FpQVPWi/SProJycHNzd3cnOzsbNTWrchRBCCCFuBmazyo8vbq2UfLqYi6c997zZtXbleCUFjJ/dhqP2dkyO+hf3tH3Ccri4mK8mjrIkn6ytWFJV7IxmHvt1EXbVlOPsX53AlnkncXTVc9eMztg76auMva7MJvgwEnKsJKAAUMAtCJ45BFJCVi2T2cSg+YNILki2el5Bwd/Jn+Vjl9/Qcrxb/d85RUVFnD59mgYNGpQnJ2orZsdW1s7+usJKKFdvH/rc9ygRnbperamKK3D27FlCQkJYvXq1zQ2+xa3H1j/PUoInhBBCCCGuu8SYrGqTTwB5mcUkxmQR3MT2nYyiT/7FUXs79KrKsGYTy49v+P6XC2V31igKJXotG77/hQH/esBqSEFOCbuWWpradh7V6OZJPgHEb60m+QSgQs45S1yDHtdtWreivSl7q0w+AaioJBUksTdlLx0COlzHmYlLRXTqSqMOnTh39Ah5WZm4eHgS3KzFNV35JKq3du1a8vLyiIqKIjExkcmTJxMWFlahebr455IElBBCCCGEuO7yc6pPPtU2rsyCkwsA6Kdxw9PRq/x4duI5m66vLm77olhKikz4hbrSrEtgreZ1zeVVnTC5rLh/sNSC1KsaJ64tjUZLSIuWNQeK68JgMPDiiy9y6tQpXF1d6dq1K3PmzKnUc0n8M0kCSgghhBBCXHfObrbtOmVrHEChsZC/MqMBGONdsS+Je2AwHKt5DPfAYKvHk0/ncHRrIgA9JjRGuZJd+q4FF/+rG/cP5utk266GtsYJ8U8yaNAgBg0adKOnIW5S0oRcCCGEEEJcd4ERHjh7VJ9c0mgVPAKcbB5zdfxqcjERbDDSKezCLmUlJQZ2JZyt/mJVxc5gotcDd1Y+ZVbZ9McJAJp0DiCgobvNc7puQrtaejxRVWJMAbdgS5yoVlu/tvg7+aNU8V4qKAQ4BdDW7+bY1lwIIW4VkoASQgghhBDXnUaj0GOC9R2gyphNKgve3UNmUr5NY84/MQ+A0Xl5aILaAJCemc1bz76AfewOVABVtfy6WOnrkHZ9rTYgP74jieTTOejttXQZ3cimuVx3Gi0Mfqf0xaWJk9LXg9+WBuQ20Gq0TO04FaBSEqrs9ZSOU25oA3IhhLgVSQJKCCGEEELcEI3a+NFlTOWEjounPd3HR+Dm40BOWhHz/7uHs8cyqh0rLjuOPSl70agqI0u04FGfE6cS+GTSM7imncSo6Kg/9jFap+ThYDBVuNbOaKZRq96M+s8LlcYtKTSydWEsAO2HhuHsbntJ4HXXfASM/xHcLulP5RZkOd58xI2Z1y2of2h/ZvWehZ+TX4Xj/k7+zOo9i/6h/au4UtRWHd+UXYh/BFv/HEsPKCGEEEIIccMYS8wABDZyJ7J3MM5u9gRGeKDRKES09+fvLw+SdCqHJR8foPfdTWjWNcjqOGXNx7sXFhHg35JN2/ax4bO3cTUWUKhzoufjU2inFJOQlEJQngtnH3iU7JRk3AOD6fXAnVZXPgHs+iuOwpwSPPydaNU35Nq8CVdT8xHQdKhlt7u8ZEvPp9CusvLpMvQP7U+fkD7sTdlLakEqvk6+tPVrKyufrpKyptQFBQU4Ojre4NkIIa5EQUEBQI3N5iUBJYQQQgghbpj4Q2kANO0aSOMOARXOObnZMfLZNqz94Sgxu1NY++MxspIL6TyyYYUm4AazgcUnFwMwJjePzfn+bP37NRxVI7lOvtz58gwaN6zPuUmTAPAcMYJmTzxS49wyk/I5uOYMAN3HRaDV3SLFAxotNOhxo2dRJ2g1WjoEdLjR06iTtFotHh4epKSkAODk5ISi3GTN/YUQ1VJVlYKCAlJSUvDw8ECrrT5BLwkoIYQQQghxQxTklJASnwtAaKS31RidXsuAB1vg7ufE7r/i2LsinuzUAvrf3xydneWD7sYzG8koysDbrMH5jBebUxLRAbk+4fzfGzPw9nTHmJlJ7qrVAHiMu73GuamqyuY/YjCbVcKivKucnxDi8gUEWJLOZUkoIcStycPDo/zPc3UkASWEEEIIIW6I+MPpAPjWd622t5KiUeg0oiHufo6s++kYsXtTyc3Yx9DHW+LkZsf8mPkoZhi+z5ktKV4oQHFEF158ZTJ2dpZygJw//0Q1GHBo0QKHZs1qnFvcoXQSojPQ6BS6jau+WboQ4vIoikJgYCB+fn4YDIYbPR0hxGXQ6/U1rnwqIwkoIYQQQghxQ8QftpTf2bq6qGnnQNy8Hfjry0OkxOUw7+3ddHowiJ3xWxmwxw/SHVFQcew5lueeeLD8OlVVyZpn2SHPltVPRoOJzX+cAKB1v/p4+DnV9tGEELWg1Wpt/gesEOLWdYsUsgshhBBCiLrEZDJzJtqys11olO3lbUERntw+uT3ufo7kZhSxctZuhm8KISjdEb1iol+LEv59UfIJoOjAAYpjTqI4OOA2dGiN9ziw5gw5aUU4u9vR7rbQ2j2YEEIIIaySBJQQQgghhLjuEk9mU1JkwtFVj3+oW62u9fB34vbJ7XHwyqAk43dcClVUnY47wg7QqkO7SvGZpauf3AYPRuvqWu3YeZlF7P4rDoAuY8Kxc5CCASGEEOJqkP+jCiGEEEKI665s97v6Lbwr7Ghnq/l/LiPt1I/oVDOK1g9751GcKAnDx79VhZ+wmvLyyfnrb8C28rutC2IxlpgJaOhO447+tZ6XEEIIIayTFVBCCCGEEOK6K2tAXtvd5cxmMx+++xlJi79Fp5pJ8CvA2K0LisaFAwUj+HtDfUqKjOXxOX//hVpQgF2DBji2bVvt2OdjsojZlQwK9LyjsWwJL4QQQlxFkoASQgghhBDXVXZqIZlJBSgahfrNvWy+rqCwiDenvIJpt2VF05EGuaxrl8qIwWEMdH8fLSXEHS9m4ft7ycssBrjQfPz226tNKJnNKht/tzQeb949CN/61ZfqCSGEEKJ2JAElhBBCCCGuq7Ld7wIbuWPvpLfpmsTkdN55ZhJOCfsxo5DRuSm7mmXQzKc5TQuyiXDczKgmv+DoqiftTB7z3t7F2U2HKTpwEHQ63EeNrHb86M3nST+bh72Tjs4jGl7xMwohhBCiIklACSGEEEKI6yr+UGn5nY273x04fIKvX3gat6wESjR2NLn3WY40OAnA2IixkHgAgIAIH8ZObo9ngBP52SUs/SWRNO9IXPv2Redd9b2K8g1sXxwLQMfhDXB0tbuSxxNCCCGEFZKAEkIIIYQQ142h2MS5E1kAhEX61Bi/YvUWlr31Ii7FWeTbuTFg8hvU7+BFbHYsDloHbmtwW3kCisBWuPs6MnZyO+o1dsekajkY+Rjno0ajqmqV99j55ymK8414BTkT2TP4ajymEEIIIS4hCSghhBBCCHHdnD2WgcloxtXbAc9Ap2pjZ/8wjwPfvIO9qYgc1yDun/kB7ds0Z0HMAgAGhg3EVe9SIQEFYO+kp2d4EkHnN4OiYdceMxt/O4HZZK50j7SzeRzeeA6AHuMj0Gjl47EQQghxLehu9ASEEEIIIW5FqslEwe49GFNT0fn64tS+HYpWe83uZzKWsPfQT6TmJODrVp+2Ufeg1d16pWJxpbvfhUV6lzcFNxiNrFm3nbSUVHz8fOndowOfzvoC5cBqtEBeUAteeONVXJydyCvJY3nccqC0/C4rAYqyQKMHv2bl98lZMI8mJ7bj0yaCgyn+HN5wjpy0QgY9HInOXktiTBb52cXsXRGPqkKjtr7Ua2p7Q3QhhBBC1I4koIQQQgghailn5UqS35qJMSmp/JguIAD/F6fhNnDgVb/f6s0zefvEHJK1F3Zx89/3AVMb30X/7tOu+v2uFVVVSThc1v/JUn73x9xlHF/8E06GPACSgQPfadGpJgDMLfvx0pSn0Oosyb3lccspNBYS5hZGG782cHSJZXC/ZqCzB6AkIYGC7dtRFIXOj/YkOMWOVf87QsKRDH59bQdmk0pBTkmFudVr6nmtH18IIYT4R5M1xkIIIYQQtZCzciXnnn6mQvIJwJiczLmnnyFn5cqrer/Vm2cy6eQcki/51JaigUkn57B688yrer9rKf1cHnmZxej0GoIbe/DH3GUkzPsCx9LkUxmdakIFiht34YX/PFuefALKy+/GRoy1rKC6pPwOIGu+Jca5Wzf0wcE0bOPL6OfbYueoIy+zuFLyCWDDLyeI3ZdylZ9YCCGEEGUkASWEEEIIYSPVZCL5rZlgraF16bHkt2aimkxX5X4mYwlvn5iDCqAoFc6ppa/fOTEHk7FyQuVmFFe6+129pp6oGpXji38CQKki3nT6EAajsfz18YzjHEo7hE7RMbzRcMvBsgRUUGsAVKOR7AWWBJTH7beXX+sT4opOX/1H381/xGA2V92sXAghhBCXTxJQQgghhBA2Kti9p9LKpwpUFWNSEgW791yV++099JOl7E6xnqJRFYUkrcLeQz9dlftda/GHLpTfrVm3HSdDXpXJJwVwMuSxZt328mMLTy4EoE/9Png7eluSfon7LScDWwOQt3ETxtRUtJ6euPbtU35tYkyW1ZVPF8vLLCYxJusynkwIIYQQNZEElBBCCCGEjYypqVc1riapOQlXNe5GKsozkHw6G4DQSG/SUmx7j8riik3FLIm19HsaEzHGcjI3CfJTQdGCfwsAsubNA8B91CgUuwtN2vNzim26n61xQgghhKgdSUAJIYQQQthI5+t7VeNq4utW/6rG3UjxR9JRVfAOdsbVywFvHx+brvPxs7yXq+NXk1OSQ4BzAF0Cu1hOlpXf+TYBvSOG5BTyNmwAwOP2sRXGcXazt+l+tsYJIYQQonYkASWEEEIIYSOn9u3QBQRUHaAo6AICcGrf7qrcr23UPXiazFXfTlUJMJpo2+LOq3K/aym+bPe7SB8MRUUUHVhfbbwKFOhd6NenM3Ch+fjo8NFoNaVNyS9pQJ69aBGYTDi2bYt9o0YVxguM8MDZo/rkkounPYERHjY/kxBCCCFsJwkoIYQQQggbKVot/i9OqzbG/8VpKFpttTG2UlUz9mVdki5tfF76ekp6Btp590NxxZ3kbiZmk5mEI5YElG+oht9nTOXUnh2gaFCxJJsuVva6ych70Ot0JOQksDNpJwoKo8JHXQi8KAGlms1kzZ8PVGw+XkajUegxIaLaeXYfH4FGU1VXKiGEEEJcCUlACSGEEELUgtvAgTi0jKp8Qqsl+MMPcRs48Krd6481z5GkVXAym/G9ZCGUAzDLswP9S1Q4sRy+HwzZ567ava+mpNM5FBcY0ekzWPPNDJJPncTR1Y2dze/gb79B5OtcKsQX6l2of/u/GT9uKHCh+XjXoK4EuQRdCLwoAVWwcxeGhAQ0zs64DR5kdR6N2vgx+LHISiuhXDztGfxYJI3a+F2lJxZCCCHEpXQ3egJCCCGEELcSc0kJxSdjAfCfPh1FpyPptdegpOSq9X4CyMyI5dPEDaBReC6oP2P7vcveQz+xN/UAnyauw6y1p8PgD6HdE/DrHZB0CL7tBxN/g6DWV20eV0P8oXRMhlOU5PyF2VSCZ1A9lEEPs2N9Mm7e3vzrjYfYt3MvaSmp+Pj50q9PZ/Q6y8dUo9nIopOLgIuajwPkp0HOWcvXAVFkffIaAG7DhqFxcqpyLo3a+NGglS+JMVnk5xTj7GYpu5OVT0IIIcS1JQkoIYQQQohaKNi1C7WgAK2vD57jx6FoNBTu3Uv2ggVkzZuHU9s2V+U+n6x8glyNQhOzhrH93kWrs6NDm4dor6qsXHI7JzJP8Nfpv5jYdCI8vAZ+mQCpR+H722Dst9B06FWZx9VwZMNfGPJWAiohLVrS81/PM/jL3QA8N7AJ/u5ODB7Q3eq1m85uIq0wDU97T/qE9Llwomz1k3c4pkITuStXAtbL7y6l0SgEN/G8omcSQgghRO1ICZ4QQgghRC2U7bLm0rMnisbyUaos6ZHz99+Y8q68F9PR44uZV2RZ3TOt7SS0Orvyc4qilK8Emn9iPqqqgmcoPLQCGvUFQwH8dhds/bRy36jrzGwysfyLz8hOXAGoNOvej7EvzuCzrefJKjDQxN+VuzpVv4NfWfPxEY1GoNfqL5y4qPwue8lS1JIS7Js2xSGyxTV6GiGEEEJcCUlACSGEEELUQnkCqlev8mOObVpj16gRamEhOcv+uqLxVbOZmdteQ1UUbtN60a7VfZVihjUchp3GjuOZx4nOiLYcdHCHO+dC+wcBFVb+B5Y+CybDFc3ncpUUFrDo3dc5sv5vADyD+3Pbk89wPKWQOTviAXh1RHN02qo/jibnJ7Px3EbgkvI7KE9AqQEtyZo7F7AkAhVFSumEEEKIm5EkoIQQQgghbFR8+jSG+ATQ63Hu2q38uKIo5augsubNu6J7/LVxOvuUEhzNKpP6f2Q1xt3enf6h/QFYcGLBhRNaHQydBYPeAhTY8z38Mh6Ksq9oTrWVk5bKb69M5vS+3SgaHXrnYbQcMAqA6UuOYFZhaFQgXRv5VDvOn7F/YlbNtPVrS0OPhhVPliagivI8KD5xAsXODvfhw67F4wghhBDiKpAElBBCCCGEjcpWPzm1b4fWxbnCOfeRI0Cvp+jQIYqOHbus8QvyUph1ypJQesS7LQEBrauMvb2xJeG17PQyCgwFF04oCnR5Au6YA3oniF0L3w2CzPjLmlNtJcXG8Mt/JpGaEIeTuwcO7hPQ2jUmLMqbpQcT2Xk6Awe9hmlDmlY7jlk1l5ffVVr9VJgFmacByNpoea9dBw1C6+5+1Z9HCCGEEFeHJKCEEEIIIWxkrfyujM7LC9d+/QDImnt5q6C+WfE4KVqFeia4d+An1ca2929Pfdf65BvyWRm/snJA06HwwN/gGmhpTv5tPzi7+7LmZauYXdv4ffpU8rMy8QkJpde9L6Pij4unPY6+Drz111EA/t0rnHqeVe9UB7AraRdn887iondhQOiAiieTDgFgdg4hZ/kqwLbm40IIIYS4cSQBJYQQQghhA1NePgW79wDWE1BwIQmSvWQJ5qKiWo2fkLCZH3Itq3kmN7sPe4fqV/MoisLoiNHAhUbdlQS1tuyQ5x8F+akweygcWViredlCVVV2LVnAn++/hbGkmLDW7bjjtXdJO2M5Xz/Smy83nCIxu4hgD0ce69Ww+gGB+THzARjSYAhO+kuSVaXldznp9TAXFKAPrY9Txw5X9ZmEEEIIcXVJAkoIIYQQwgb5W7eAwYA+tD72DRpYjXHu2gV9UBDmnBxyV62q1fjvrp+MQVHohhO9O02y6ZqRjUaiVbTsS9nHqaxT1oPcg+HB5dB4MBiLYO79sOn9q7ZDnsloZPU3n7Hx5/+BqtJqwBBGT34FO0dH4g6nA+Ac6sJXGy3ze3lYMxz02mrHzCrKYnX8agDGNB5TOaA0AZV1qBAAj7HSfFwIIYS42UkCSgghhBDCBtWV35VRNBrcx1oSJrUpw9u082PWq7noVJXJvd5G0dj2Ec3XyZee9XoC1ayCArB3gTt+gU7/trxe8xosfhKMJTbP0Zqi/DwWvD2dg2uWg6LQ+95H6PfQv9FotWQmFpCbXoRWp+F/MYmUGM10C/dmUIuAGsdddnoZBrOBpl5Nae7VvHJA4gGKs3UUxqaAVov7qJFX9BxCCCGEuPYkASWEEEIIUQPVbCZv40ag+gQUgMeYMaAoFOzcSUlcXI1jG4rz+e/hbwC4yyWchmF9ajW3sRFjAcuOcQaToepAjRZuexuGvAeKBvb/DD+PgYKMWt2vTHZKEr++/AIJh/ajt3dg1Asv0W7oyPKVSHGH0wBwDHZi+fEUtBqFV4e3qHGlkqqqzDthSd6NiRhTOb4kH9JOkHXKUpbn0rs3ej+/y3oGIYQQQlw/koASQgghhKhBUfRRTKlpKE5OOHWovteQPjAQ5x7dAciaX82qpFJzVj1NnBa8TSr/GvRFrefWLbgbfo5+ZBZnsu7Mupov6PgI3PkH2LlA3Cb4bgCkx9bqnudPHGXOf54j49wZXDy9mDDjHRq161QhJv6Qpfxuc0E+APd2CaWxv2uNYx9OO8zJrJPYa+0Z0mBI5YCkw5hNKtnxll0IPcZJ83EhhBDiViAJKCGEEEKIGuRtWA9Yejxp7OxqjC9rRp61aCGqoepVSakpR/gidTsAz4QNw8U1sNZz02l0jAy3lKBVW4Z3sYgB8OAKcKsH6SctO+TFb7Xp0mNbN/LHay9SmJONX1gj7nxrFv4NGlWIKS4wkBibDcDOokK8ne14pn9jm8Yvaz4+IHQA7vZWGrEnHiDvnAOmIgWdvz8u3bvbNK4QQgghbixJQAkhhBCiTjCZVbbFprN4/zm2xaZjMl+dJtsAeRtsK78r49q7N1pvb0ypaeWle9Z8uPopCjQKUWYdI3q9Ue2YZrPKueOZnNiVxLnjmZgver6y3fC2nt/K+bzzNs2RgEh4ZA0EtYHCTPhxJBz4HQBTcSEnvp7J3ulPcuLrmZiKC1FVle3zf2PZR//FZDDQsF1HJsx4G1cvn0pDJ0RnoJpVMrQq2VqVyYOb4O6or3IqJrOJXUm7WBizkKWxSwFL+Z1ViQfKy+/cx4xG0else14hhBBC3FDyf2whhBBC3PKWH05kxpJoErOLyo8Fujvw6vDmDI6s/aqiixnT0yk6dAgAl562JaAUOzvcR40k47v/kTV3Hq79+lWK2X/4V/40pAAwrdOLaLRVfyyL3ZfCpt9jyM8qLj/m7GFPjwkRNGrjR4hrCJ0CO7EjcQeLTi7i8daP2/ZwrgFw/1+w8FE4ugQWPsqBH35ic5yRIn3pfI7G4bB8A55+XiRm5gDQbuhIet79IBqN9d3s4kt3vzupM9Kynjvj2oVUOYXV8at5e+fbJBcklx/TKlqyirKsxpcc30t+kj0AHmPH2vacQgghhLjhZAWUEEIIIW5pyw8n8u+f91ZIPgEkZRfx75/3svxw4hWNn7dxE6gq9s2bofe3vdm1x9jbS6/fiCE5ucI5s8nIzF3vADDKzp+o5uOqHCd2XwrLvzpcIfkEkJ9VzPKvDhO7z5LEKmtGvvDkQkxmk83zxM4Jxv0I3Z7mwOlAVp9VKdJVTCwV6bTlyad+Dz1O73sfqTL5pJpVTh20NCA/pTPz6vAWaDTWG4+vjl/NpPWTKiSfAEyqiec2PMfq+NUVLzAUkb3rHKDg3LEtdvXq2f6cQgghhLihJAElhBBCiFuWyawyY0k01ortyo7NWBJ9ReV4eRs2ALaX35Wxb9gAx/btwGwme+HCCucWrZtKtMaEi1nl6QGfVjmG2ayy6feYau+z+Y8YzGaVvvX74m7vTlJ+EtsSt9Vqrmg0mHpOY3NuqOX1pTvPKQqoKnZGI1G9qt+lL+l0NoYCI0WodOgQQLtQT6txJrOJt3e+jWr1u2fxzs53KiTT1MTDZMU6AOAx4S4bHkwIIYQQNwtJQAkhhBDilrXzdEallU8XU4HE7CJ2ns64rPFVg4H8zZsBcK1lAgouakY+bz6q2QxATvYZPjqzHIB/+XfFx6dpldcnxmRVWvl0qbzMYhJjsrDX2jO84XCgFs3ILxL7w4cU6fWVk09lFIUSnY7YHz6sdpzlq+MAOGtvZuqQZlXG7U3ZW2nl08VUVJIKktibsrf8WP6qxRgLtWgdNbgM6F/tPIQQQghxc5EElBBCCCFuWSm5VSefLifuUgV792HOy0Pr6YlDVFStr3cbNAiNiwuGs2cp2LEDgC9WPkGGRqGBSeHO/h9We31+TvXJp0vjypqRr0tYR3pheq3mmnf+3BXH5RQZSCjt/9S4tR9+bg5VxqYWpNp0v4vjsv62NHR37xxu026EQgghhLh5SAJKCCGEELcsP9eqExyXE3ep8vK7nj1QtNZ7HlVH4+iI2/BhAGTNnUds7Cp+zT8FwNSW/0Jv51Tt9c5u9jbdpyyusWdjWvq0xKgaWRK7pFZzdQkKvuK4T5cdw8egoAJ3jmpS7Ti+Tr423a8szpiWRm60pd+V+4jBNl0rhBBCiJuHJKCEEEIIccvq2MCLQHcHqigaQ8GyG17HBl6XNf7l9n+6WFkZXu6qVXywchomRaGPxo2u7WveqS4wwgNnj+qTUC6e9gRGeJS/HhMxBoD5MfNRVdt7XzW67xkcDEao6hpVxcFgoOE9T1k9fTIljx1bzwPgGOCIu2f1Sb+2fm3xd/Kv8ryCQoBTAG392gKQvWA+mMHRuwSHToNseCIhhBBC3EwkASWEEEKIW5ZWo/Dq8OZVnleBV4c3R1vFLmzVKTl7lpLYWNBqce7e/bLn6NiiBQ7Nm6MaDDgdKcROVXmh93s2XavRKPSYEFFtTPfxERV2mRvcYDCOOkficuLYl7LP5nlq7R3p3qGF9ZOlSanm59JJmvIi5sLCS06rzFhyhLASy0fLlh0Car6fRsvkDpOtnlNKU4pTOk5Bq9GiqipZf/wOgEcTFTwb2PRMQgghhLh5SAJKCCGEELe0wZGBPNk33Oq59qGeDI4MvKxx89ZbVj85tWmD1s3tsucH4DxyCAD9Dpi5z605ISFdbL62URs//BtYv3+HYWE0auNX8V56Z25rcBtgWQVVG+6t+1ptQu5gNNKj5AwB+cXkrlxJ/H33Y0y90Jtp9dEUtp5II8xg+WgZGult0/2yirOACwmnMv5O/szqPYv+oZZG44W7d1NyNhGNzoxb56ZVN0oXQgghxE1Ld6MnIIQQQghxpXKLjAD0aezLqLbBFJQYeXHBYXbHZ7LjVDqdGtqWELlYefld78svvyuz2H4VHXRQPxU6Bj9Rq2tNRjMZifkA9JzYGHsnHSd3p3D6QBqxe1Npf1sYGm3FnymOiRjDgpgFrIxbydSOU3G1c63xPmajkbXffwUKhDq50bJLFHnnz+ESFEwj82q0SfEUdB/E2bkJFB08yOkJEwj58kto0IjXl0ZTz6jBDgUnNzt8Q2q+X3ZxNp/s+wSAFzq8QFOvpqQWpOLr5Etbv7ZoNRd6bmXNmweAW/1CNKFtbH7vhBBCCHHzkASUEEIIIW5pqqqy7rilOfWEjvUZHGkp/zp8Loc5OxJ49c8jLP2/7ui0ti/8NhcUlO9adyX9nwASz+/h68LDmJoq9DqsUrR0NXSyfczEk1kYikw4uuqJ7BGMolGo39ybOa9sJ+N8Poc3nqNln5AK17T0aUm4Rzgns07y9+m/Gd9kfI332f3R+2QqZnQmM/1fnI5HROMLJ88Phq/74JS3grAPf+DM9C8piY8nfuKd7H1wMgkZzgzVWHo+hUZ6o9hQ8vjpvk/JKs4i3COciU0notNY/1hqyskhZ/kKADwaFUBgqxrHFkIIIcTNR0rwhBBCCHFLO5WWT3x6AXqtQvcIn/Ljzw1sgrujnmNJufy660ytxszfvgO1pAR9UBB24dbL+2z1/tpnKdIonG1laSaevewvTHn5Nl8fdzgdgNAWFxI7Ds56Oo1sCMDOJacpzC2pcI2iKBWakdekIDmZndssK75aN2tZMfkEENQG2t4LgN2B9wn79RecOnTAnJ9P1KczGHp6K1EaO8s8o2pebXY84zh/nPgDgKkdp1aZfALIXroUtbgYew8TDl4GSUAJIYQQtyhJQAkhhBDilrbumGX1U6cG3rjYX0hkeDnb8dxASyLl/ZXHycwvsXq9NReX3ylX0G9o177vWGHKRKOq3D3+NezCwlALCshd/rfNY8QfKk1ARflUON68exA+IS4UFxjZ/uepStcNazgMvUZPdHo0R9OPVnuP9W+8SrFWg4tJpdu0l60H9XsF7N0h6SDaU4up/923HGvVE61q5sETmzBlG9BoFUKaVb/joKqqvL3zbcyqmQGhA+gU2Kna+LLyO48GeSh2TuB9ZQlBIYQQQtwYkoASQgghxC1tbWkCqk9Tv0rn7uxYn6YBrmQVGJi16oRN46mqeiEBdQXld0ZDETP3fwzAOMf6NG0yHI9xtwOQNXeeTWNkpxaQlVyARqMQ0rxiYseyQ54lwRa9+TypCbkVzns6eNKvfj8AFsQsqPIeSdu3cSzZskKsx6jx6JycrQc6+0CfFy1fr3mNvafO8WzYcH5oPph070gAvEzJ6EzF1T7TivgV7E7ejYPWgefbP19tbOGRIxRHH0XRaXELK4CAKLioN5QQQgghbh2SgBJCCCHELSu3yMDO0xkA9LWSgNJpNbw6vAUAc3bEE30+p8Yxi0+cwJiUhOLggFOn6lfnVGfumueJ0ZhxN6s8OfAzANxHjgSdjsIDByg6UXNCLK509VNguDv2jpXL1ILCPYjo4A8qbPztBKqqVjhfVoa37NQyioxFla43m82s/vhdVEUhSO9I87vvq35CHR4C32ZQmMHZhS+DoqDc/SC5nUcD4HFyI3H33IMhOdnq5QWGAt7f/T4AD0Y9SJBLULW3K1v95NoyEJ29KuV3QgghxC1MElBCCCGEuGVtjknDaFZp4ONMAx/rK3e6NPJmaMtAzCpMX3KkUpLmUnnrLaufnDt1QuPgcFnzysyI5dPE9QD8X1BfPDwbAKDz8cG1Tx8AsufX3Jspvqz/U6RPlTFdx4Sjs9eSdCqbEzsrJn46BXYi2CWYXEMuq+JXVbr2yOzvSDaVoDGr9Ht2cs0PptXDbW8DMLRoGe0czvN0z4akZFqSY37GsxRHHyVu3HiKoqMrXf6/w/8jKT+JIOcgHmjxQLW3MhcWkrNkKQAejU2Wg5KAEkIIIW5ZkoASQgghxC2rvPyuSeXVTxd7cUgzHPQadp7OYOnBxGpjL+7/dLk+XfkEORqFJmYNt/d7r8K5sjK87EWLMZdU3ZeqpMjIuROZQPWNvV087Wl/WygAWxecpKTIWH5Oo2gYHW5ZnXRpGV5Jbi6b/1oEQPN6Yfi162DTs2UFdGUVndApZj71/J2CM/mYTSruvo60+Plz7Bo1wpiSQtzd95C7dl35dWdzz/L94e8BeKHDCzjoqk/u5axYgTkvD329ejjZnbQclASUEEIIccuSBJQQQgghbklms8q646mA9fK7iwV7OPJEb0vz6rf+OkpBidFqnDEzk8L9+4HL7/909Phi5hadBWBqm2fR6uwqnHfu1g1dQACm7GzyVq+ucpyzxzIxG1XcfBzwDHCq9p6t+oXg5utIQXYJe/6Or3BuZPhINIqG3cm7icuOKz+++c0ZFGgVHExmer30ms3PN2vVCWYU30kxdgRm7iJu017AkiSzq1ePsF9/wblrF9SCAs4+8QQZP/yAqqq8t/s9SswldArsVN6bqjrlzceH9EUpyQatHfg2tXmeQgghhLi5SAJKCCGEELekw+ezScsrxtlOS8cG1e+8BvBIz4aEeDmSmF3E5+tircbkb94CZjP2jRujD6q+P5E1qtnM29teQ1UUbtN60b71/ZViFK0WjzGW3kxlSRZrLi6/q2knPp1eS/dxEQDsX5NAVnJB+bkA5wC6B3cHYOHJhQBkHI3mYKylRK5zzwE4eFe9wupiRxNz+Hl7PGdVX1Ki/oWqQvzxQgDCSssEtW5uhHz1FR7jxoGqkjzzbfZPfYJ1cavRKlqmdpha4/MUnzpN4e49oNHg3r70++DfwlICKIQQQohbkiSghBBCCHFLKiu/6x7hg52u5o80DnotLw1tDsDXG08Rn55fKeZKd7/7e9MM9iolOJpVJvX7qMo49zFjQFHI37qNkrNnK51XVfVCAqqa8ruLhUV5U7+FF2ajypZ5MRXOlTUjX3xyMQazgTXvvI5Jo8EbLW2efNqm8VVVZfqfRzCrMCQqgJDh00hz6EKByR2dzkRQhEd5rKLXE/DaDPxeeAEUBYfF65gy18w9oWMJ9wyv8V5Z8y2JOZeePdGXxFkOSvmdEEIIcUuTBJQQQgghbknrShNQ/Zr623zNwOb+9IjwocRk5o1lRyucU00m8jdtAi6v/1NBXgrvx1oaiz/s3ZaAwNZVxtrVC8a5a1cAsqw0I087m0d+VjE6Ow3BjT1sur+iKHQfF4FGoxB3KJ24Q2nl53rW64m3gzfpRemsnP0uCYW5oKr0e/RJNBrbPg4uO5TIjtMZOOg1vDikGdg5ERfwFAAhuj1o8xIqzcf7oQc5+cIYinXQ5pTKiHd3YDh3rtr7qCUlZC9aDJT2y0o8YDkhCSghhBDiliYJKCGEEELcclJzizlwNhuA3k19bb5OURReHd4cnUZhVXQyG06klp8rPHAAU3Y2Gnd3HFvVPtnx7conSNEqBJvgvoGf1Bhf3ox8wUJUY8WeVPGHLKuf6jX1QqfX2jwHzwBnWvYLAWDz3BhMRjMAeo3e0gvKqBK/zLLKK9zTj5B+A2wat6DEyFulCbt/9wqnnqelJ1V8sqX3VpjdLlj5UqXr0gvTecthDa/crcXg5YrxZCynJ9xB4aFDVd4rd/16TOnpaH19cOnRQxJQQgghRB0hCSghhBBC3HLWH7esfooKdsfPtfrd1C4V7ufKfV3DAJix5AglpUmavPWl5Xfdu6PodLUaM+HMFmbnWBI0k5vei72De43XuPTti9bTE2NyMnmbN1c4F3/YsnopzMbyu4t1GBKGo5sd2SmFHFh7pvz4mIgxjNjuQqFOj85kpu9LM2we88v1sZzPLiLYw5HHejUEoDC3hOT4HABCHfbD0SUQu67CdR/v+5g8Qx6OkS1oPHcB9k2aYEpLI/6ee8lZsdLqvcqbj48ajVKYCgVpoGjBr0Vt3gYhhBBC3GQkAVXHmc0q545ncmJXEueOZ2I2qzd6SkIIIcQVW1eagOpz0e53ZrOJM0cOcnTLBs4cOYjZbKry+qf7R+DjYsep1Hx+3BYHXNT/ycbyO5OxhF37vuOvDa/y4ur/w6AodMWJPp2fs+l6jZ0d7iNHApA190Iz8sK8EpJOlyZ2ImufgLJz1NF1dCMAdi+LIz+rGACvbAWfTE8APEO9cA2pX/WzmVW2xaazeP85/tx/ji82WJq2vzysGQ6lK7Lij6SDCj4hLjh3Hmu5cPlUMBkAOJx2mIUxlqbn0zpOwyG4HqFz5uDcqydqURHnnn6a9G+/RVVVS/njjp1k/Pwz+RstZZAeY8dcWP3k1wz0tUs0CiGEEOLmUrsf711lM2fOZMGCBRw7dgxHR0e6du3KO++8Q5MmTcpjioqKeO655/jtt98oLi5m0KBBfP755/j7297v4Z8qdl8Km36PKf/gCeDsYU+PCRE0alP9dtVCCCHEzcpgMrPphGWFUN/SBFTMjq2snf01eRkX+h65ePnQ9/5HiejUtdIYbg56Jg9qyuT5B/lwdQxDAzQUHz8OGg3O3bvXOIfVm2fy9ok5JGtLd3PTAKpKT7+2KDb2VALwuH0sGbNnk7d+PYaUFPR+fiQcyQAVvOu54OJ5eUmXJp0COLzxHMmnc9i2MJb+DzRn3ZvTMWq12BuK+a19CnerZjRK5bkuP5zIjCXRJGYXVTjeNMCFQS0Cyl+XlQmGRflAn2lwaC6kHoNd32Lu9Bgzd85ERWV4w+G09msNgNbFmZDPPiP57XfI/PlnUt57n7wtWyg5dRpjcnL52IqdHUUnTmCnl/I7IYQQoq64oSugNmzYwBNPPMH27dtZtWoVBoOBgQMHkp9/YVeaZ599liVLljB37lw2bNjA+fPnGVO6dbGoWuy+FJZ/dbhC8gkgP6uY5V8dJnZfyg2amRBCCHFldsVlkFtsxMfFjpbB7sTs2Mqfs96qkHwCyMtI489ZbxGzY6vVcW5vV4+W9dzJKzay7BtLI3DHVq3QeXpWe//Vm2cy6eQckq18inonZROrN8+0+Vnsw8NxbNMGTKbyxtvxpc3Dwy5j9VMZRaPQY0JjUOD4jiQOzF1BTIYlwXOsST5nShLZnri90nXLDyfy75/3Vko+ARxLymPFkSQATCYzCdEZQOkqLUdP6PeKJXDdTJZG/8rB1IM46Zx4pt0zFeem0xHw0n/w/89/QFEo2La9QvIJLI3Izz39DDlrLavSJAElhBBC3PpuaAJq+fLl3H///bRo0YJWrVoxe/ZsEhIS2LNnDwDZ2dl89913zJo1i759+9KuXTu+//57tm7dyvbtlT80CQuzWWXT7zHVxmz+I0bK8YQQQtySyna/69XYDzCzdvbX1cf/8LXVcjyNRmH6CEtfIe1OS5LKpVf15XcmYwlvn5iDCqAoFU+Wvn7nxBxMxpKaH6SUx+2WZuRZ8+ZhMpouJHaifGwewxr/MDeadQ1EVVU2LPwDFIUQBxcCRw4FYEHMggrxJrPKjCXRVPXpQAFmLInGZFZJOplNSaERBxc9fmFuloC290JAS/JKcvhgzywAHmv1GH5O1ldde945Ea179b2ykv+KRzUjCSghhBCiDrihJXiXys627Gbj5eUFwJ49ezAYDPTv3788pmnTptSvX59t27bRuXPnSmMUFxdTXHxh1U9OjqWHgsFgwGAwXMvp3zTOx2RVWvl0qbzMYs4cSyMowuP6TEoIIYS4StYcLU1ARXgRf+hgpZVPl8pNTyP+0EHqNY+sdC4q0IXbI31ovcTygxu7rl2r/byw5+DsC2V3VqiKQpIWdh2YTbuWD9jyODj274fy1lsYEhI4tWQbxQVG7J11eNVzvOLPLu2H1ufohnUYTMkoqkKvZyfTPMiO347/xpqENaTkpuDpYFnxteN0htWVT+XPBiRmF7HtZArqwSwAQpp5YjIZMZXm95SBM/l6yV2kqSXUd/RnQviEKp+hYNcuTFlZVU9eVTHmQ36qPfbeTeAf8jlOCFv9U/5tI4SoO26aBJTZbOaZZ56hW7duREZaPiAmJSVhZ2eHh4dHhVh/f3+SkpKsjjNz5kxmzKi8q8vKlStxcnK66vO+GRWc1wGONcZt3bATpxhjjXFCCCHEzSKtCE6l6dAoKgWn9rLl7Embrtuyfi2ucQlWz3VPOI6DyUCqozs/bT9Fp9OnqhznTMYmm9aP7z64ieSztver9GvRAo+dOzm4eCc4tEbrXsjy5X/bfH1V1IJ8jNkrQQM6xw5sPXkGTTwEaYM4bzrPe3+9RzeHbgDsSVMAbY1jrty0g+BoR0BLuiGev/6KLT+XakrlJ3fLiqgnEtNZvXwlWOkzBeC6fz+BNjxDvtGLNas32hApxD9LQUHBjZ6CEELUyk2TgHriiSc4fPgwmy/Zhri2pk2bxqRJk8pf5+TkEBISwsCBA3Fzc7vSad4SzsdksfTAoRrjuvbqKCughBBC3FJ+3J4A+47RIcyLsSM6cDb6MAu2rqvxum69+1pdAQWQuv8A2cAu/2asTHHi+YndcHXQW43dczCZrw7vr/F+7Vv2oF3LITXGlSmqX5+zE+8k12QpV+s8IJLw9le+Ycjayc9i1BjRKM5oHDrhZQyl68hGFMQU8Nautzhuf5w3bnsDRVHwPp3BjzG7axyzV8s2HNsVg6KB4RP7Yu9k+Tipqir/t/7/MOZCz8IShmQmYOxRgBo13uo4Bb6+nP/1txrv5xzRgiFDbH8vhfinKKv0EEKIW8VNkYB68sknWbp0KRs3bqRevXrlxwMCAigpKSErK6vCKqjk5GQCAgKsjAT29vbY29tXOq7X69HrrX+YrGtCmvrg7GFfbRmei6c9IU190GiqLiMQQgghbjYbYiw7r/Vr5o9eryc0qiUuXj7VluG5evsQGtUSjaby6h5VVSnYtAmAhIjWpOWV8MXGOP4ztLnVsTq0uh//Ax9bGpBf2gMKUFQVf7MlTquz/XOHrnVrzM3ake8chIJKg5Z+V/y5JXX/XqLPngaNQuu2vYk+pefIxkQie9ZjWPgwZu2dxansU0RnRdParzVdwv0IdHeosgxPAQLcHfDJtbwObOSBi/uFFdcbzmxga+JWdBodkxuPgaQP0a2dAS1GgL1rpfHcOnUiJSDA0oBctd55SudkxLlrT5R/yGc4IWrjn/JvGyFE3XFDm5CrqsqTTz7JwoULWbt2LQ0aNKhwvl27duj1etasWVN+7Pjx4yQkJNClS5frPd1bhkaj0GNCRLUx3cdHSPJJCCHELaWgxMj2U5YEVN+mltVBGo2Wvvc/Wu11fe571GryCaDk1CkMZ8+i2Nkx+uFRAHy/JY6TKXlW47U6O6a6t7Z6TilNokxpfBdanV1Nj1PxWkUhr4tll1+PkvPlq4quxJr338asUfDT6On1/GM0bO2LalbZ/EcMLnoXBoYNBC40I9dqFF6uIvFW9onh1eHNSThi+R6EXrRLX4mphHd2vQPAvc3vJbTni+DVEPKSYeO71sfUavF/cVrpC+sN3f3b5KAEt6n1swshhBDi5nNDE1BPPPEEP//8M7/88guurq4kJSWRlJREYWEhAO7u7jz00ENMmjSJdevWsWfPHh544AG6dOlitQG5uKBRGz8GPxaJ3r7iB24nNzsGPxZJozZXvqxfCCGEuJ62nEynxGgmxMuRRr4u5cfDO3bB1cfX6jVuvn406tCpyjHz1m8AwKljR3q3CqV/Mz+MZpUZS46gWluVU5hFp1Pb0Fs552+GWeF30b/7tFo+mUWKXX0APM/uoujwkcsao8zRX37iXEkBiqrS/8lJaDQaut0ejlan4eyxTE7tT2VsxFgAlsctJ6/EknArMFi6iV/6I6oAdwe+uLst/SL8OHc8C4DQqAsJqB+jf+RM7hl8HX15tOWjoLOHwW9bTm77HNKs9+pyGziQ4I8+ROdfsV+Wzs+X4G4ZuIUUQUDLK3ovhBBCCHFzuKEleF988QUAvXv3rnD8+++/5/777wfggw8+QKPRMHbsWIqLixk0aBCff/75dZ7pralRGz8OrT9b/kERoOvYRpJ8EkIIcUtae8yy+13fJn4oF62YSY6NITctFa1Oz/Bnp1JSXITOzo7ln39ATmoKh9asoNUA6z2E8jZYElAuvXoB8NLQ5mw8kcammDRWH01hQPNLGolv+C9/a4owaJxo6BrGf8JGkpZ7Bl+3+rSNuqfWK5/KGEtMnI+1JIF80o+QNW8ejlHWe1bVOFZhIRsX/AZahSa+QQR26wGAm48jbQbWZ/dfcWyZe5KJr3YkzC2MuJw4lsctZ1D9kbz99zEAXhjchDYhnqTkFuHn6kDHBl5oNQqnD6ZhMppx9XLAK9AZgOT8ZL4++DUAz7Z7Fme95TiNB0HEQIhZCSumwV1zrc7XbeBAXPv1o2D3Hoypqeh8fXHyykeZMwo8w8DR47LeByGEEELcXG5oAsrqTxYv4eDgwGeffcZnn312HWZU92QmWnbH8At1JSU+l7Sz+TSp+gfBQgghxE1JVVXWH7ckoPo0rfiDlENrVwLQuEt3GrW/8D+5vAlprP3+Kzb/9hONu/TA0aViHyJTbi4Fe/cC4NLbkoAK83Hm4R4N+Hx9LK8vjaZHhA8O+tLVxCnHYOdXzA+wrPwZ22QcHVvce1We7+zxTIwGM87OCs7558lZuhT/KZPRXMYOvlvffp08rYKdyUzvl1+rcK7t4FCObUskN6OI/avPMDZiLO/veZ8FMQs4cbIFaXnFNPBx5qHuDbDXVS5bjD9k6bUVGuVdngT8YO8HFBoLaeXbimENh1W8YNBMiF1nSUKdWGFJSlmhaLU4d+p44cCWjy2/B7aq9fMLIYQQ4uZ0Q0vwxLVVlG+gIKcEgMYdLU3bUxNyb+SUhBBCiMtyNDGXxOwiHPVaOje8qPdQUSFHt1hWMUX1HVjhmlYDhuATEkpRXi5b//i50pj5W7aA0Yhdw4bYhYSUH3+iTzj+bvYkZBTw3ebTloOqCsuncFSnEG1vj06jY3ij4Vft+eIPW/oqhbUNxK5+fcz5+eQsX1HrcbJPxbLvyH4AOnbsjnNAYIXzejstXceGA7BneTx9PQehU3QcSjvE97u2AvDKsOZWk0+qqpbPs6z/076UfSw7tQwFhWmdplVYmQaATzh0edzy9fKpYKx6g5QKEg9YfpcElBBCCFFnSAKqDss4nw+Ai5c9QY09AEg7k2vTyjMhhBDiZrKudPVTt3DvCyuSgBPbNmMoKsQjIJB6zSqWrGm0Wvrc/xgAB1b+TWr86Qrny/o/lZXflXG21/HikGYAfLr2JInZhXBsGZxazwI3dwD61e+Hp4PnVXk2VVWJK11ZFBblg8dYS2+mrHnzaj3W2rdmYNRq8FAVOkyabDUmvJ0fQREemAxmopel0zukNwAat530bepXaYVZmfRz+eRlFqPTa6jXxBOT2cTMHTMBGBMxhhbeLaxPqucL4OIPGadgu41tFCQBJYQQQtQ5koCqwzISLQkor0BnvAKd0egUiguM5KZb315ZCCGEuFmV9X+qqvwuqu+gyqtvgPqRLWncuTuqambt7K/Kfwijms3kbdoEVE5AAYxoFUSHME8KDSbeW3oAVkyjSFFYVpqAGhMx5qo9W8b5fPIyitHqNQQ39cR91CjQaincu5fi2Fibx4n7exmncjMA6HPvw2h01jstKIpCjwmNURSI3ZtCw8z+AOjd9zHltkZVjh9/2JIkC27qic5Oy4KTCziacRRXvStPtX2q6onZu8KA0lLADe9CTmL1D1KcC+mlTcsDJAElhBBC1BWSgKrDylZAeQU6o9Vp8A6y7BgkZXhCCCFuJZn5JexLyASgT5MLCaj0swmcP3EURaOhRa9+VV7f6+4H0dnZczb6MCe2bwag6PBhTOnpaFxccGrXttI1iqIwfUQLNAoERn8LWQms8g4iVzUQ5BxE58CrtxtvWVlbcGNP9HZa9P5+5UmxrHnzbRrDbDSydvZXAIQ5e9Bw2Mhq433quRDZMxiAnHUOqCWeKNpCYvO3Vz3PQ6VlgpHeZBdn8/FeS5+mJ9o8gZeDV/UTjBoP9TqCIR9Wv1p9bNJhQAW3YHCxvruhEEIIIW49koCqwzISLbvpeAVZdqPxrW9pvioJKCGEELeSDSdSMavQNMCVIA/H8uNlq58ateuIs0fV5XBuvn50HHm7Zayf/oehqKi8/M65WzcUvd7qdS2C3PlXa3ue0C0GYEFgQwBGR4xGo1y9j1AXyu8u9LbyuN0y3+xFi1BLSmocY8/Hs8jEjNZspt+0V2y6b8cRDcFOg4dBodW5cQAsiFlgNbYoz0DSqWwAQqN8+Hz/52QVZxHuEc74JuNrvplGA7e9Ayhw8HdIqDrRReJ+y+9SfieEEELUKZKAqsMySnfA8wq0rHwqT0CdkQSUEEKIW0dZ+V3fi8rvjAYD0RvXApbyu5q0HzEGN18/ctNT2fnnPPI2WO//dKmn1Z9wVEpYrG3M7rx4NIqGUeGjLvNJKivKN5B0Kge40NgbwKVnD3S+vpgyM8ldu67aMQpSU9ixdT0AbZpE4RHR2KZ7ZxqNrLOzJLe6ZrTA0eDCjqQdnMk5Uyk2ITodVbX8UCtRSeD3478DMKXjFPQa6wm8SoLbQtt7LF//PRnMJutx0v9JCCGEqJMkAVVHFeUZKCzdAc8z0LKFs2/IhRVQ0ohcCCHErcBoMrPhRCpQMQEVu3sHhbk5uHh5E9aqcgndpfR29vS+52EAdi2eR0bMccCS6KlS3Gbsjy3CjIZ3nJsC0CmgKwHOAZf7OJWcic5ANat4Bjrj5nNhdZei0+E+xtJnqqZm5Otff4VirQYXk0q3F21b/QTw9t/H2KM1kOugQAkMS38QgIUnF1aKjTt0Yfe7d3a+g0k1MSB0QO1LEfu+AvbuliTTvp+sx0gCSgghhKiTJAFVR5WV37l6OWDnYGlC6h3sjKJRKMw1kJ9V83J+IYQQ4kbbdyaL7EIDHk562tS/UGZ3aO0KACJ790ej1VZ1eQXhHbtQP7IVJqORo4HeOERFofPxsR5sMsLfUwAwtL2XfE9LM3BzdscreJrK4kobe4ddtPqpjMdYSwIqf8sWDOfOWb0+afs2jiVZViz1GDkOnZOzTffdFZfB4v3nQQPdx0cA4H26Id75wSw6uQij2VgeazarJERbElCpvqfYmbQTe609z7V/zsanvIiLL/SZZvl6zWtQmFnxfEkBpB6zfC0JKCGEEKJOkQRUHVXegDzowgdRnZ0Wr9LVUFKGJ4QQ4lZQVn7Xq7EvWo1ll7vslGTiD+0HILLPAJvHUhSFPvc/igIke7iQ07JF1cF7vofkw+DgweZmfTFrcjEbXVi715ujiTmX+zgVmM0qCYctu9aFRlVOQNnVr49T586gqmQtqLwqyWw2s/rj91AVhUC9A83vud+m+5rMKq8uPgLAHR1C6N61HhEd/AGF3nF3kFqQyuZzm8vjk09lU5xvxM5Jy+eJ7wPwYOSDBLsE1/KJS3V4GHybQkE6rJtZ8VxKNKhmcPYF18DLG18IIYQQNyVJQNVRF++Ad7GLy/CEEEKIm906K/2fDq9fDapK/ajWuPvVrhzO2z+QsCzL/yP3JMVjMhorBxVkwNo3LF/3fYkFCZZm56F2vTCrWl7988hVKWVPicuhKN+AnaOOgEbuVmPKmpFnLViAaqrYM+nI7O9INhWjMav0f3aKzff9bVcC0Yk5uDroeH5gEwC6jmmEzk6Db059wtPaMT/mwu57caW79JUEZXK+8DyBzoE8EPlArZ61Aq0eBr9t+XrXt5B85MK5ixuQK8rl30MIIYQQNx1JQNVRGYmWD9eelySgfGQnPCGEELeIc1mFHEvKRaNYVkABmM0mDq9fBUBU34G1HrNgzx7Cz6RgZzKTmZbC/hVLKwetfQOKssA/kqSmQ8pXA03v8wAOeg07T2ew9GDiZT9XmbLd7+o390Krtf6RzHVAfzTu7hgTE8nfurX8eEluLpv/WgRAs+Aw/Np1sOmeWQUlvLfC0v9q0oDGeLvYA+Di6UC728IA6BI/gm3xO0gpsCT/4kv7P23QLAPg+fbP46hz5Io06gPNhoNqspQ6liX0pP+TEEIIUWdJAqqOKktAXVyCBxd2wkuTEjwhhBA3ubLVT23re+LhZAdA/IF95KWn4eDiSniHLrUeM2/9BvRmM60D6gOwde4v5Gdd1Ico8aCl/A7gtndYfHopZtVMe//2dKzXhMd7hwPw1l9HKSixsnqqFuJLVxZZK78ro7G3x33ECACy5l5oRr75rRkUaBUcTGZ6v/yazff8YNUJMgsMNPZ34e7OoRXOte4fgpuPA84GD1qd7cefsX+Sm1FE+rk8VFROux2iY0BHBoTaXvZYrYFvgs4B4jZB9GLLMUlACSGEEHWWJKDqoMLcEgpzDQB4BjhVOOdTzwUUyMsspiBHGpELIYS4eZUloPpcVH53aK2lHK55z77o9Ppaj5m3YQMAUUNH4d8wnJLCAjb/9qPlpKqWrsYxQ4sxmEO7lu8INybC0hD80Z4NqefpSGJ2EZ+tO8m22HQW7z/Htth0TGbby/LyMotJO5MHCoS2qDoBBeBx+1gActas4dgP37Pl9Vc5cDIagM49++PgXf31ZY4l5fDT9ngApg9vgf6SVVc6vZbu4ywNyVud68OmtQdY8OtGAJKd4zDYFTGl4xSUq1Ua5xkK3Z62fL3iP3D8b0g6bHntH3l17iGEEEKIm4YkoOqgstVPrt4XdsArY+egw8PPkpSSVVBCCCFuVkUGE1tiLSVqZf2f8rMyid2zA4CoWjQfL1MSH09JXBzo9bj26E6f+x8D4PC6VSSePA6H50PCVtA7wcDX2Z64nXN553DVu5av+nHQa3lpaHMAPlsXy8RvtvP0b/uZ+M12ur+zluWHbSvNiy/d/c4/zA1HV7tqYx2aNCE1PIx1jeux7K/5bD+8B7NGg2JW0drZ23Q/VVWZ/ucRzCoMiQqga7j13f/CWvqg9zOhRUfHo6PJO2T5HOFZFMAg9XYaeza26X426/YMOHpDzln49Q5LSR7AD8Mg+s+rey8hhBBC3FCSgKqDrO2Ad7GyMjzZCU8IIcTNatupdIoMZgLdHWgaYPn/1pENazCbTARGNMGnflitxyxb/eTUrh1aFxeCmzSjeY8+AKz73xeoK162BPaYBO71WBCzAIChDYfioHMoH6eqBuRJ2UX8++e9NiWhysvvImtevXTg68/Z5aShSK+tcFxVYM3avzjw9ec1jvHXoSS2n8rAXqfhxSHNqoxbtGoNJSkaVCo+o53JgZBtXVi4cnWN96qVk6uhML3y8ZxE+ONeSUIJIYQQdYgkoOqg8v5PgTUkoKQRuRBCiJvUxeV3iqKgqiqH11nK76L6DrqsMfPWWxJQLr16lR/rcdcD6B0cSYw9SfRZI3iEQpf/I7MokzUJawAY23hsebzJrPLa0mir45elbGYsia62HM9kMHPmmKXvVFiU9ZVIF2JL2LyytFH6paVvpa83r1yKyVB1WX1hiYk3l1nm/O/ejajn6WQ1zmA0cnJZnmVoKt6r7PXJZbkYrO0ceDnMJlhe1e59pe/f8qmWOCGEEELc8iQBVQfZvAJKElBCCCFuQqqqsrY0AdW3iaX87tzRI2Qmnkfv4EiTrj1qPaY5P5+CXbuAigkoF08vutxm2U1vY0oDinvPAL0DS2KXYDQbae7dnKZeTcvjd57OIDG7qOq5A4nZRew8nVFlzLmYTIzFJpzc7fAJcal23rGLF1Gk1VROPpVRFIq0GmIXL6pyjC82xHI+u4hgD0f+1atRlXEbd+3CqditUvKp/FYoOBW7s7H0fbxi8Vsh53w1ASrknLPECSGEEOKWJwmoOqjGFVClH3Zz0oooyjdct3kJIYQQtjiZksfZzELsdBq6hltK1A6tXQFA0649sHNwrPWY+du2oRoM6OvXx65BWIVzbU1r8LQroMBkx/ZDGaiqWl5+NzZibIXYlNyqk0+2xsUfulB+V1ND77zE6hI0NcedySjgyw2xALw0tBkOl5TxXSw9Pdume9kaV6O85KsbJ4QQQoibmiSg6piCnBKK8sp2wLOegLJ30uPmY+llkXY277rNTQghhLBF2eqnLg29cbLTUZSfx4ntW4ArKL/bcKH8rkLSJ2Y12pi/6RNg2R1u799/svXQamKzY3HQOnBbg9sqjOPn6oAtqopTVZW40v5PYZHVl98BaFxdbbqfS2CQ1eNvLjtKidFM10beDI4MqHYMb293m+5la1yNXPyvbpwQQgghbmqSgKpjMktXP7n5OKC3r/qnnFKGJ4QQ4mZVXn5Xuvvdsc0bMBpK8AkJJSC89ruwqapqtf8TxhJLjyGgQf87aNi2A2aTiU0/fQ8qDAwbiKtdxQRQxwZeBLo7VFGkZuFkp6VtfQ+r57KSC8hJLUSjVajXzLPaeZ87fpQtm1aXPURVD4eDyUyjkaMqndock8byI0loNQqvDm9R42qrnh06UGCfU6kBefmtUCmwz6Znhw7VjmOz0K7gFgRVvpsKuAVb4oQQQghxy5MEVB1TU/ldGUlACSGEuBllFxrYHW9p0F2WgDq0tqz5+MAakyjWFEVHY0xNRXFywqnjRcmTnV9Begw4+0KvyfS+7xE0Oh36hBzqpThWKr8DSpM5zYGq0yYFJSYe/WkPuUWVy9zLdr8LivDAzkFX5ZyPbtnA3NdfpCgvF1dXN8vBS5NQpa+7DxyGVm9X4ZTBZGbGkiMA3NM5lCYBNa+k0ut0hA+1lOlfmoQqex0+1BW9rup514pGC4PfKX1x6btZ+nrw25Y4IYQQQtzyJAFVx9TUgLyMb4gkoIQQQtx8Np5IxWRWCfdzIcTLieRTJ0mJi0Wr09GsR5/LGrOs/M65Sxc0dqWJmtxkWF+a/Og/HRzc8QwIwqVLMwC6HfMjyqOF1fEGRwbyxd1tCXCvWGYX6O7AY70a4qjXsuFEKrd/sY2zmQUVYuJK+z9Vtfudqqpsm/crf338LiaDgfAOnXng0//Rv/9QHC7ZWc/BrNK//1BaPfp4pXF+2hZPTEoeXs52PNvf9lVjowf2J3iMSqF9xc8HhfY5BI9RGT2wv81j2aT5CBj/I7gFVjzuFmQ53nzE1b2fEEIIIW6Yq/QjLHGzsHUFlE9pAiorpYCSImO1P4UVQgghrpd1l5Tfla1+Cu/YFceylUC1dKH/U88LB9fMgJJcCGoLre4sP7yhXhyN7Y045+vY+9diOo0eb3XMwZGBDGgewM7TGaTkFuHn6kDHBl5oNQrDooJ46IddHE/OZdRnW/nuvva0CvGgpNBIYkwWYGlAfimjwcDKrz7m6KZ1ALQfPoaed96PotHQ6tHHiXzgYWIXLyIv8TwugUE0Gjmq0songLS8Yj5YfQKAFwY1wd1JX6v3a/TA/hj6Gtm4axfp6dl4e7vTs0PPq7fy6VLNR0DToZbd7vKSLT2fQrvKyichhBCijpGsQx2iqupFK6Cq39bZyc0OF0978jKLSTubR1C4x3WYoRBCCFE1k1ll/YlUAPo08cNQXMTRzesBS/nd5TBmZFB08BBwUf+ns7th/xzL10PeBY1lQfjxjOMcyD5MfjNXuu/3YvvC32nesy+u3tZXK2k1Cl0aVU4kRdVzZ9ET3Xhw9i6OJeUy4ettfDC+NY0NWsxmFXc/Rzz8nSpcU5CTzZ/vv8m5Y9EoGg39H3qclv0HV7yf3o7Gt1tPiF3svRXHyS0yEhnsxvj2ITXGW6PX6ejXpctlXXtZNFpo0OP63U8IIYQQ152U4NUhhbkGivINoIBHgFON8T5ShieEEOImcuBsFhn5Jbg66Ggf5smJ7VsoKSzA3c+f+i1aXtaYeRs3gqpi36wZen9/MJvhrxcsJ1vfBfXal8cuPLkQgAadOxHUuBnG4mI2zvn+su4b5OHIvH93pU8TX4oMZv49Zy8rVp0GKu9+l3H+LL++9DznjkVj5+jEmGkzKiWfbHXwbBa/7z4DwPThLdBqat8zSwghhBDiWpAEVB2ScT4PADdvB/R2NS9bL2tEniYJKCGEEDeBsvK7nhG+6LWai5qPD0LRXN5Hlkrldwd+gfN7wc4V+r1aHldsKmZJ7BIAxjQeS98HHgNF4diWDZw9duSy7u1ir+Obe9tzf9cwUCEvzvL/6eAWF3a/O3PkIL++9DxZyYm4+fpz5xvvEdayzWXdz2xWmf7nEVQVRrcJpn2Y12WNI4QQQghxLUgCqg4p7/9UQ/ldmfKd8M5IAkoIIcSNt7Y0AdWnqR8Z589y7tgRFEVDi179Lms81WAgf/MWoLT8rigbVk+3nOw9BVz9y2PXxK8hpySHAOcAugR2wb9hOC37DrLM6/uvMJtNlzUHnVbD9BEteLlbI5xVhRJUXtocQ3aBgcPrVzPvzVcoys8jMKIJd77xHt716l/WfQAW7T/H3oQsnOy0TL2t6WWPI4QQQghxLUgCqg7JSLTstFNTA/IyZTvhZSQWYCy5vA/WQgghxNWQnFPEkfM5KAr0buJbvvqpQdv2uHhV7rNki4J9+zDn5qL19MSxZUvY8F/ITwXvCOj4WIXYBTELABgdPhptafPrbnfcg72zM6lxpzi0ZuUVPB1EaewBOGuvsuVUOlNffJsVX3yI2WSkcZcejHvlLZw9PGsYpWp5xUZm/n0MgP/rG4G/m0MNVwghhBBCXF+SgKpDykrwvIJsS0A5e9jh6KpHNaukn8u/llMTQgghqlVWfteyngeeDhqiN64FLOV3l6us/M65R3eUjJOw40vLicFvg+7C7nFncs6wI2kHCgqjwkeVH3dyc6fruLsB2Pz7TxTmXf6K4fhDaQAM6hvMqKy1hCfuAKB+3xEMe+oF9Hb2lz02wCdrY0jNLSbM24kHu4dd0VhCCCGEENeCJKDqCFVVL5Tg2bgCSlEUKcMTQghxUygrv+vbxI9Te3ZRkJ2Fs6cXDdu0r+HKqpX3f+rZC5ZPBbMRmgyBiP4V4sqaj3cN6kqQS1CFc60HDsG7Xn2KcnPY+secy5pHQU4JKfG5qOZ8krd9TUjWCcyKhlU+ffhPQgh/Hky8rHHLxKbm8b/Nlgbnrwxvjr2u5j6QQgghhBDXmySg6oiCnBKK840oCnjasANeGV/ZCU8IIcQNVmw0sfmkZYVQ36Z+HFq7AoAWvfqh0V5eMqXk7DlKTsaCVotLQAHErgWtHQx6s0Kc0Wxk0clFAIyJGFNpHI1Wa2lIDhxY+RepCXG1nkv84XTMpjSMhb+TcjoGB2cXRk2bQf1OvSgxmXn6t/18tDoGVVVrPbaqqry2JBqDSaVPE1/6NvWv+SIhhBBCiBtAElB1RNnqJzcfR3Q27IBXpnwFlCSghBBC3CA7T2dQUGLC19We+vbFnD6wF4DI/2fvrsPbOs/Gj3+P0JaZKY4dcMBhbgNtk6Ztysy8FdbBuy3bu8L727oOCts67NZ161amlFNK2zTQQMNoB+yQnZiZZMmSzvn9cSxDTLItU3x/ritXYunReR4lthzdvmHxBT2+Zu36dQAETpuKceOv9Rvn/wAiR7datzFvIyX1JURYI1icvLjda42cPI1x8xagaSprX3iu24GizPXf0FD9Jp6GSsLjE7j5N0+TNm0G/7xtFvedo5/nT6uzWL5iL05393oyrjlUzPqsEsxGhZ9flt6txwohhBBC9CcJQJ0hyvP1AFSEj+V3Xt4AVFl+LR636vdzCSGEEF1pmn43zSwTtQABAABJREFUPoYD678CTSN50lQi4hO7eGTHmsrvUo1QmQMhibBweZt172a/C8AVY67AbDR3eL1zb/82JrOFkwf2k7Vlo8/n2P3Fp+TseQFoICZ1PDf/+g9EJiYBYDAoPHLJRB6/egpGg8L7u/O47fmtlNc1+HRtp9vDrz4+AMC3Fo5idIxvU3CFEEIIIQaCBKDOEE39n3xsQO4VEhWA1WZCdTf3kBJCCCH6k7cB+eJx0exfq0+bm7Lkwh5fT62vx751GwDBDXozcy78NVhbB2iK7cVsOLUBaL/8rqXQmFjmXHkdAOtf+S8uh6PzM6ge1r38PGv+8w9Aw2KbxM2/egJbaFibtbfMG8mLd88hxGpi+4kKrv7HJo6W1Hb5PP+z8Tg5ZXZiQqz8YElal+uFEEIIIQaSBKDOEBXdbEDupSgK0dIHSgghxAA5VlLLiTI7ZqNCakM+NaUlBAQFkzZ3fo+vWbdlC5rTiSnMgjWoFkaeDZOvbbNu5dGVeDQPM2JnMDp8dDtXam3OldcSGhNLTVkJ21a+0+E6l8PByqefYOcnHwBgCpjPhHPuwGy1dPiYRWkxvPfd+YyICCSnzM41/9jMN0fLOlxfWOXgmTVHAHj44gkEW01dnl8IIYQQYiBJAOoMoGlaUwledzOgoLkMr1QCUEIIIfqZt/xu7qhIjmz4CoCJixZjsnQcrOlKU/ldTAWKwQAX/w4UpdUaVVN5L/s9oOvsJy+zxcq5t38bgO0r36WquLDt3uVlvPnLBzm6YwtGk4nwxKswBZ5F6pToLq+fFhfC+99dwIyR4VTVu7j9P1tZseNku2uf/Owg9gYPM0eGc9X0JJ/OL4QQQggxkCQAdQawVzfgtHd/Ap5XzEi9JKHkpASghBBC+I9H9bC9cDufHvuU7YXb8ahtG2yvPawHoM4dGciR7VuAnpffeZxOjvznFbI251IRnkZgghNm3QUJU9us3VG4g5M1JwkyB3Fhiu/7pc2dz8jJU/G4XKx96XlOZu7j4Kb1nMzcR+GxI7z2f8spPn6UwJBQLv7BozjqR6MYFEamR/p0/ZgQK2/cexaXTU3ArWr87J19/G7VIVRVw6NqfHO0jD9/mcUHe/IB+OUVkzAYlC6uKoQQQggx8CRf+wzgzX4KjQnEZO7+uOqYxhK80pO1qKom/5EVQgjRa6tzVvPkticpshc13RZni+OhuQ+xNGUpALVON9uOlwOQUn6IDI+b+DFpxKSM6vZ+GX94li2ZsTitSTD6NgAOOMs5KzOPyZe1Xe9tPn7JqEuwmX3/4Y2iKCy+8z5e+tkPOLpjC0d3bGmzJjJxBFc/9EtyD7iAChLGhGG1ddzg/HQBZiN/vWkGo6KD+NuaI/xj3VG2HCsjv7Kewmpn07pAs5H8ynqmjgj3+dpCCCGEEANFMqDOAE3ld93s/+QVHmvDbDXidqlUFtr9eTQhhBDD0Oqc1Sxft7xV8An0pt/L1y1ndc5qADZml+DyaKRGBpK/bR0AU5Zc1O39Mv7wLOuzx+G0hLe63WmJYP2xyWT84dlWt1c5q5rOcG1a295QXakoyAdN6/D+uVffQHhcPDn79R5OKVOiur2HwaDwkwvH84frp2E0wK7cylbBJ4B6l4cHXt3FqoyCbl9fCCGEEKK/SQDqDNDTCXheikEhOlnK8IQQQvSeR/Xw5LYn0WgboPHe9tS2p/Conqb+T0ujHZTnncRktTJ+/jnd28/pZEtmrP7BaX2evB9vyYzB42wO3nx87GMa1AbGR4wnPSq9W/upqoc1L/6r0zWb3nwZZ30DeVmVAD71f+rI1TOSCAvsvB/WYx8dwKN2HBATQgghhBgMJAB1BuhtBhQ0l+HJJDwhhBC9sat4V5vMp5Y0NArthewo3MnawyUAjCzZD8D4sxdhtXWvl+Hx197GaY1oG3zyUhSc1kiOv/a2vr+mNZXfXZN2DUpHj+tA3sFMastLO11TU1bK3i+34nGrhEYH9Kg/o9e24+WU1zV0eL8GFFQ5mkoZhRBCCCEGKwlADXGaplFR2LsMKGiehCcBKCGEEL1RYi/xad2e/FxKapyEGz1UZG4DelZ+V1tY2a11GaUZZFdkYzVauXT0pd3fr7LCp3UnD54CIGVydLeDXC0V1zj8uk4IIYQQYqBIAGqIs1c1T8ALj+v5T1i9AajSkzVoksYvhBCih2JsMT6tO1akD824MDAft9NJZFIyieMmdHu/wIC2k/XaExwfDjQ3H78g5QLCrGHd3i84PMKndeUF+vfSnvR/aik2JMCv64QQQgghBooEoIY4b/ldWKytRxPwvCLibRjNBhocHqpK6/11PCGEEMPMzNiZxNniuly37dRRAEYU7wNgypILu50p5NiwEl75J1ZHRadNwdFUbPMvwu6y89nxzwC9/K4nkiZOIjiy855OtvAonPWxmCwGksaF92gfr7mjIkkIC6CjvxkFSAgLYO6oyF7tI4QQQgjR1yQANcQ1NSDvRf8nAIPRQFRSYyNyKcMTQgjRQ0aDkYfmPtTlutKAl0iwfYyrKBeD0UT6OUu6tU/Na09z4oGfodbDhJNvt79I0/RfioGVf8/kg8/XYHfbGRkyktlxs7u1n5fBYGTJXfd1uiZ1xtUoioEREyJ79cMhAKNB4dHL9UbppwehvB8/enk6RkPPy/yEEEIIIfqDBKCGuPL8WqB3/Z+8WpbhCSGEED11/sjzibXFtrk93hbP0+c+zYLo6wGYVJsJwOjZc7CF+lgOp2mU//p+Tv3m32huBVtqIDP+8ySK0jYDytpQwYIxR0idGo3HpVLxsY0Zpy7g6rHdbz7eUtq8+Vyx/JE2mVAhUdFcsfwR7NXJAKRM7l35ndeyyQk8e9tM4sNal9nFhwXw7G0zWTY5wS/7CCGEEEL0JdNAH0D0jr8yoABikiUDSgghRO/tKdlDsb2YAGMAT5/7NLWuWmJsMcyMnYnRYOTDTdG48lyMztsJwOehGSxylBMZ0HkZmeZ0UPTdq6jYlAMohM9NJP5fH7FvcxkaBqKSbMxOPEJtUSXB8eGMuvV6jFYrU1WNT1/bQc6mGuadvIyEHRF40lWMpp7/HC5t3nzGzJmnT8WrrCA4PIKkiZNosKt8+eIGwH8BKNCDUBekx7PteDnFNQ5iQ/SyO8l8EkIIIcRQIQGoIUzTtKYeUP7MgCrJrUXTtF79dFgIIcTw9W6W3uj7otSLOCf5nFb3uTwqX2eVMLIsEqvbQF2ghw2mDG795Fb+vvTvjA4b3e41PaX55N15JXVHawGN2OvPJvKx/4CicGBjPgCTFo1g7HlntXmswaBwYMJaduUfZ+GJazmxrYKVFXu4+DtTCAgy9/h5GgxGkidNbXVbTmYJmgZRScGERPq3MbjRoHD2GP8FtYQQQggh+pOU4A1hdZVOGhweFINCeGzPJ+B5RSUGYzAoOOpc1FY4/XBCIYQQw01NQw1f5HwBwHXjrmtz/44TFdQ43Uy3HwZg9tLLSApJ4lTtKW779Da2Fmxt8xjXoZ3kXHkhdUdrUYwaST+7g6hfv4BiMFB8ooby/DqMZgNpc9pvft7gaeCjox+RGb+RUTeZMAcYyc+u5N3f7aSyyO7HZw85GWVA76ffCSGEEEKcaSQANYR5y+/CYgIxmnv/T2k0G4hM0jOppAxPCCFET3x2/DPq3fWMDhvNtJhpbe5fe7iYMFclcXWnQFFYuOwGXr/0dabHTKemoYbvfPkd3s9+v2l9/VcrOH7zrTjLPBgDNVL++itCv/VI0/0HNunZT2NmxnSYzbTm5BoqnZXE2mK5aNFCrv3fWQRHWqkssvPO73aQn13pl+euelRyM/UAVKofy++EEEIIIc4EEoAawvxZfucVk+wtw5MAlBBCiO57L/s9AK5Ja7/R95pDxaTXHAJg1LSZhEbHEBkQyfMXPc/FqRfj1tz8YvMv+NPOP1H1n1+T8z+/wFOvYI0yMuqN1wg8/4amazU43GRvLwIgfUFix2fK0s901dirMBlMRCUFc92Ds4lNCcFZ5+bDP+/m8JaCXj/3wuPVOO1urEEm4kb72FRdCCGEEGKYkADUEObPBuReTX2gZBKeEEKIbjpUfojMskxMBhOXj7m8zf0ny+0cK6piYq1efjdlyUVN91mNVp465ym+M+07oGmUPv88+b9/Hc2jEDQmmJQPv8A8YVar6x3ZWYzL6SEsNpDEtPB2z3Sq5hTfFHwDwNVjr266PSjMylU/mcmYGTGoHo3VLx5k68pjaFrbaXq+ytmvZz+NTI/CIM3BhRBCCCFakQDUENYnGVAjJQNKCCFEz3izn5YkL2l3ot2aQ8Wk2HMJ8tixhYUzetacVvcrisJ3J9zNv78M5ba1KgDb5gQQ+NoHGKPbZjgdbCy/S1+Q2OHgjA+OfADAWQlnMSJkRKv7zBYjF907mZkXpQCw49MTfPnfA7hdnm4862Y5GaUApEr/JyGEEEKINiQANURpmkZFH2RARSUFoyhgr2qgrkoakQshhPCNw+3g42MfA3Bt2rXtrllzqJhJNQcBSD9nCUZT655NnqIccq9cSNjOCjRF442LLPxhqZtbV99NdkV2q7Vl+bUUHqvGYFAYf1Z8u/t5VA/vH3m/0zMpBoWzrx7D4tsnYDAoZG8v4sM/7aG+psH3Jw/UlDsoy6tDUWDkJAlACSGEEEKcTgJQQ1RtRYsJeHG9n4DnZbYaCY+XRuRCCCG6Z3XuamoaakgMSuSsxLPa3G9vcLM3K4eU+lwApiy5sNX9Dfs3c+Kqi7Hn1GMwaST/v/u459cfkRqaSkFdAbd/djub8jY1rT+4Se/ZlDo1mqAwa7tn2pS/iWJ7MWHWMJaMXNLp+dMXJHL5/0zDajNReKyKd57a0VTq7gvv9Lv40WEdNkMXQgghhBjOJAA1RHn/UxweG4jR5N9/xpiRwQCUSh8oIYQQPvKW312VdhUGpe33pc1HyhhbeRADGkkTJhGZ2FwOZ//sVU7c/i0aKjRMQZDyz98TcutyRoaO5NVLXmVO/BzqXHV876vv8daht/C4VA5vKQRg4oKELs90+ejLsRgtXT6HERMiufZnswiNDqC61MG7v9vJyUPlPj3/nP16+V2KlN8JIYQQQrRLAlBDVF+U33k1T8Kr9fu1hRBCnHlyqnPYXrgdBaVVo++W1hwqJL2x/K5l9lPVs78g9ye/weNQCIg1kbpiBQELmxuYh1nDeG7pc1wx5go8moffbP0Nf373eRx1LoLCrR2Wu5XWl7L+5HpAn8jnq4j4IK57cDbxo8NoqHfz8V/3cqCx11RH3A0eTh2qACBlcrTPewkhhBBCDCcSgBqivA3II/zYgNxLGpELIYTojvez9T5LC5IWEB/Uth+Tpmlk7thFmLsGgzWQcWctQFNVSn52C/l/eRtNVQgeH0bKyrWYx0xp83iz0cxvFvyG/5nxPwCU7HYDMPas6A6nza08uhK35mZqzFTSItK69XwCQyxc+ePppM2JQ1U11r5yiG/eP4Kmtj8h79ThCtwuleAIK1FJ/v++LIQQQghxJpAA1BBV3ocZUNGNGVA15Q4ctS6/X18IIcSZw6W6+PDoh0DHjb4PFdYQX7gXgPSF52H0uCi4dTGlK3cDELk4jRHvfI0hvOPsIUVRuHfqvTw+7fckV01AQ+U551MU1hW2WatpWlP5XUdn6orJbOSCb6Uz59JUAHZ9nsuqf2fgamg7Ic/b/yllclSH0/iEEEIIIYY7CUANQZqmNQeg+iADyhpoIiwmEIAS6QMlhBCiExtObaC0vpTIgEjOHXFuq/sa6u18/ftH2fGL75JWdwSAKVMnkXvFIqp2F4OiEX/3BcQ9uxLF3HWPJoDY3HEAFEUcZ49jO7d+cisHy/TSPo/qYXvhdv6+5+/kVOcQaAxkWeqyHj83RVGYe/lolt6djsGkcGx3CR88vatpSqyqapw6XM6RHcWATL8TQgghhOiMaaAPILqvtsKJy+HBYFAIj/XfBLyWYkaGUFVST0luDckTI/tkDyGEEEOfN9PoyjFXYjY2T3/78uHvkXX4CA6zfpsCKJpG1k9/QlypE4NZI+nn3yf4hu/7vJeqahzcrE+/u+zShewv/YSjVUe5c9Wd3DLhFj4+9jFF9qLmByiwOX8zS1OW9uo5jp8XT0hkAJ/9cz/FOTW88+QOpp2fzJ7VJ6mrdDat+/rNw2iaxpgZsb3aTwghhBDiTCQZUEOQt/9TWJzN7xPwvJr6QEkGlBBCiA4U1RWxIW8DAFenNTcf//Lh77Hv6AkcptY/59KAnYnxFEUFkvr8X7oVfALIzSyjrtJJQJCZ2fPG8/IlL3N2wtnUu+v5T8Z/WgefgHp3PcvXLWd1zuqePcEWEtPCufbBWYTH2aitcLLpnSOtgk8AdZUNrHoug6O7i3u9nxBCCCHEmUYCUEOQNwDVF/2fvJon4UkASgghRPs+PPohqqYyM3Ymo8JGAXrZXdZhvdyO0/shNX6cGReDMnVRt/c7uEnPfhp/VjxGs4FQSyh/XfJXAk2BnT7uqW1P4VHb9m7qrvBYG1f/dCYGU+d9njauyEbtoGG5EEIIIcRwJQGoIai80BuA6pvyO4DokcEAVBXX01Dv7rN9hBBCDE2qpjY3+h7X3Oh7yzNP6WV3HTXjVhQcZjNbnnmqW/vVVTk5sa8UgIkLEppu31+6n3p3fYeP09AotBeyq3hXt/brSEV+Haq78+BSbYWTguxKv+wnhBBCCHGmkADUENSUAZUY3Gd7BAZbCI60AlB6SrKghBBCtLatcBt5tXkEm4O5IOWCptvrCvN8eryv67wObylEVTXiR4cS1eL7X4m9xKfH+7quK3XVzq4XdWOdEEIIIcRwIQGoIUbTNCoK+r4ED1qW4dX26T5CCCGGnvey9OynS0df2qoELig+yafH+7oO9O99BzblAzBxQWKr+2JsMT5dw9d1XQkKtfp1nRBCCCHEcCEBqCGmptyBy+nBYFQIi+u850VvNTUilz5QQgghWqh0VLI6V2/sfU3aNa3uSzvnbBStkxI1TSPA5eKs7z/o834FRyqpKq7HbDUydlbrCXMzY2cSZ4tDof2SPwWFeFs8M2Nn+rxfZxLSwgkK7zy4FBxhJSEt3C/7CSGEEEKcKSQANcR4y+/C42wYjX37zyeT8IQQQrTn42Mf41JdTIycSHpUetPtJ1a9wDt//guaooCm6b9aavx43PixWAJ972N4YKPefDxtThyWgNaT9YwGIw/NfQigTRDK+/GDcx/EaDD6vF9nDAaFRTemdbpm4Q1pGAydNyoXQgghhBhuJAA1xJT3U/kdNAegKgrqcDX0fnqQEEKIoU/TNN7Nfhdonf207z8/570X3qFBNRKlNDD1ZDEBrtZDLALcbqaOSeWCJ/7u835Ou4sju4oBSD+t/M5racpS/njeH4m1tc6OirPF8cfz/sjSlKU+7+eLMTNiWXb/5DaZUMERVpbdP5kxM2I7eKQQQgghxPBl6nqJGEwqmhqQ930AKijMii3Ugr26gbJTtcSPDuvzPYUQQgxu+0v3c6TyCFajlUtGX4LqbuDrJ+5nZ0YJoDA2zsyINbnY3C648TtYXbnUFeYRFJ/EWd9/sFuZTwBZ24rwuFSikoKITQ3pcN3SlKUsTl7MruJdlNhLiLHFMDN2pt8yn043ZkYso6bFUJBdSV21k6BQvexOMp+EEEIIIdonAaghxpsBFRHf9wEo0LOgcjLKKMmtkQCUEEII3svWm49fmHIhgQ4XH/3iDo4U6JlO8+emULzZjs3t4kRiGhf9z90YDL1Ltm7ZfFxROg/uGA1G5sTP6dV+3WEwKCSNj+i3/YQQQgghhjIpwRtCNFWjvNAO9E8GFEgfKCGEEM3qXHV8evxTAC4NmcVby2/jSIEbo6JyyVXnYB57DeMyt+BBIfnRn/c6+FSSW0PpyVqMJgPj58X74ykIIYQQQogBIhlQQ0hNuQO3dwJebN9OwPOKSZZJeEIIIXSfn/icenc96Q0JZDz9b2obTASa3Fx537eJPetK1i+5lCDg6LylXHlu7zORDmzUs59Gz4ghIMjc6+sJIYQQQoiBIwGoIcRbftcfE/C8okcG63vn1+FxqRjNkjQnhBDD1bvZ7zKiOJC5u4zUqkYiA91c/fBjhI+fx6rH/05K2SlqLTYW/Pb/er2Xq8FD1rZCANIXJPT6ekIIIYQQYmBJNGEIKe/HBuReIZEBWINMqB6tKQAmhBBi+MmuyKZh+3GW7IgB1cjIKLj5D88TPn4eZXnFRL75XwDKbriL6BFxvd7v6K5iGhweQqMDSBonfZaEEEIIIYY6CUANId4AUGRC/wWgFEWRMjwhhBjm1AYnH/z+x5x1IBIDCpPHBHPNn94mIHoEABv/73FCGuzkRyZx/v/e75c9veV3ExckoshkOSGEEEKIIU8CUEPIQGRAQYtG5BKAEkKIYaehspj3fnI9hqP6x8mzo7nwN69jtOq9CA9s2MGYLV8AEPq/D2K2Wnq9Z0VhHQVHqlAUmHi2lN8JIYQQQpwJJAA1RGiqRkVh/2dAgUzCE0KI4ar6+D7eXH4HOcUqboPKrjm1XPuT/6A0TrdTVZWcX/4aIxrZ6fOYc/UFftn34KYCAFKmRBMUbvXLNYUQQgghxMCSJuRDRE25A3eDisGkEBbTPxPwvLwleKWnalE9KoZ+aoAuhBBi4BRu+YgPnvk7dS4TboubVbNLuO7cb2E0GJvWrH/uDVLzsnAazcx4/Bd+2dfjVjm0RQ9ASfNxIYQQQogzhwSghghv+V1EnK3fA0BhMYGYA4y4HB4qCu1EJQX36/5CCCH6V/Z7f+PTFZ/i1kyEBbl5fm4h9kCVq8Ze1bSmtrIay7+fAeDkxdczfcJov+x9Yn8p9TUubGEWUiZH+eWaQgghhBBi4EkqyxAxEA3IvRRDi0bkUoYnhBBnLE1V2f635ax8axVuzUhqjIL9W+dRF+jh7MSzSQpOalq75tE/EGmvpDQ4ivMfXe63MxzYqGc/TTg7QTJuhRBCCCHOIPI/uyFioBqQe8kkPCGEOLN5nPWs/vmtfL0xC1CYNi6My//wJh8WfAnANWnXNK09sS+LlC/fB0B94IfYQvzzvamm3EHugTIAJs6X8jshhBBCiDOJBKCGiOYMqIEpf4sZqe8rASghhDjzOErzeG/59ew7UgNoLD43nfMfe4UtpTspthcTYY1gcfLipvX7/9+vsKhujqVMYtHd1/rtHIe+KQANksaHEx5r89t1hRBCCCHEwJMeUEOApmpUFAxsBlR04yS80pO1aKqGYlDaXedRNbYdL6e4xkFsSABzR0Vi7GCtEEIIcLsa2Lf6TWoKcglJGMnUpTdhMlv6Zq8GJ/veWUFVUQlhcTFMve4G6nL28/7j/48yuwmzwcOlN13OmCu/C8C7We8CcPmYy7EY9TN989YnjM3aiUcxkParn2Mw+OdnWaqqcWBTPgDpCxL9ck0hhBBCCDF4SABqCKguq8ftUjGaDIT28wQ8r4g4GyazAZfTQ1VJPeFxbX8yvSqjgMc+OkBBlaPptoSwAB69PJ1lk6WUQgghTrfxtT9g+MsLRFSreF/dt4U+hfrDu1l460/9uteGZ/7Gjk0bUFV7023rVn6IUXHgVk0Em91c9cMfEjfnYgBK60tZf2o90Fx+1+Bw4vjTHwA4uvASrpw3zW/nO3WonNpyJ1abidEzYvx2XSGEEEIIMThICd4QUF6gv1kIj7dhGKBsIoPRQNSIjsvwVmUU8MCru1oFnwAKqxw88OouVmUU9Ms5hRBiqNj42h+I/PV/CK9WW90eVq0S+ev/sPG1P/htrw3P/I1tGz5vFXwC0DQHbhVsZgO3/PbppuATwIdHPsSjeZgeM50x4WMAWP34M8RXFlJlDeac3z7kt/NBc/PxcfPiMZmNfr22EEIIIYQYeBKAGgLK82uBgZmA11LMyPYbkXtUjcc+OoDWzmO8tz320QE8ansrhBBi+HG7GjD85QUATv+xggH9tdPw1xdxuxp6v1eDkx2bNnS6xuEJIDBhbNPHmqbxXvZ7QHP2U+GJPOLefxWA6tvuJSI2qtdn86qvaeD43hJAyu+EEEIIIc5UEoAaApobkA+SANTJ1gGobcfL22Q+taQBBVUOth0v78vjCSHEkLFv9ZtEVKttgk9eBiCiysO+1W/2fq93VrTJfDqdqtrZ986Kpo93FO0gtyaXIHMQF6VeBMDWR36DzeXgZGwK5//4270+V0uHtxaiejRiU0KIHjEwwzaEEEIIIUTfkgDUEFCeP7ANyL1ikpszoDStOZupuKbj4FNLvq4TQogzXU1Brl/XdaaqqKTb67zZTxePuhib2cbeLzcxbtc6AGIefgSjyX8lcpqmcWBjY/PxhZL9JIQQQghxppIA1CCnqhoVhfpPrgc6AyoyMQiDUcFpd1NT1hxMig0J8Onxvq4TQogzXUjCSL+u60xYnG8Nvb3rqpxVfJnzJQDXpl2Lx+2h8DePA5A1fREzLj6n12dqqfBYNRWFdkwWA2mz4/x6bSGEEEIIMXhIAGqQqy6tx+NSMZoHbgKel9FkICqpsRF5izK8uaMiSQgL6LCUREGfhjd3VGTfH1IIIYaAqUtvoiLUgNrB/RpQY1OYuvSm3u81ewQGQ9vJpa0owYxYcBkAnxz7BKfHybiIcUyKmsSav77IyKJj1JuszHv8570+z+kObMwDYOzsOCyBMpxXCCGEEOJMJQGoQc5bfhcxgBPwWopJbjsJz2hQePTy9E4f9+jl6RgHwfmFEGIwMJktrLlmVLuBew09cG+za6x95pHebbTnDUxvXs/s6OpOl5lti/nwz/s5ebCMd7PfBfTm41WlFQS//BwABVfcQvzo5N6d5zTOejdHdhYD0nxcCCGEEOJMJwGoQW6wNCD3ap6EV9vq9mWTE/jHrTNRTns3FRpg4tnbZrJsckJ/HVEIIQa97YXbeSshhy3j24agKkMN5IwJwQiMeO4TPv7Rdd2fhqdpsOa38MF3QHWxaFEsSSPHtFlmMNiYefZFJE2YTUO9m4/+thfDoUgsBguXjb6M9f/vKcIdNRSFxbL05//Tw2fbseztRbgbVCLibcSPDvX79YUQQgghxOAhue6DXEVjACpikASgopsCUNVomobSIuI0NTkcTQODApdNTWTl3nzSE0Il+CSEEC24VTdPbHsCgDFKLFBEww3LqEyNIiRhJHOX3oTBaOLzX91H6pubGLMqky/yz+ecf79PcFh01xu4HPDhdyFDz2Ri4Y/RFv+cyjX3AmAJms3kKaGExcUw9bobMFmsuF0e1rx8iOztRZx37GZmBMyjaG8uo7/+GADzD3+CNdD/ffwObmpuPq6c/hMMIYQQQghxRpEA1CA32DKgopOCUQwK9TUu7FUNBIVbm+7LyKsCYHx8KMsvGMfKvfnsyKmg2uEiNMA8UEcWQohB5e2st8muyCbSGErsiUoAJtzxPaxjx7Zad/Evn+frUU8Q9ruXGbWvlK3XXED686+QMGpyxxevLYE3b4FT28Bggsv+DDNv51TmPuoqigELE8+9msV3Tmv1MJPZyILbU3mn6HWm5Z5P2IHRbNq+hTmKkSNjpnH5LVf49y8BvZdgcU4NBqPC+Hnxfr++EEIIIYQYXKQEbxBrNQEvcXAEoEwWIxHxejPbln2gADIbA1CTE0NJjQ5idHQQblVjY3Zpv59TCCEGowpHBc/sfgaAn4ReAw4nxrAwLKNHt7v+nDsfRnnmV1QHKSTmOThxw40c/OaT9i9efAieP18PPgWEwe3vw8zbAdi35gsAjJbxjJnefq+lL3O/5JukleyZ/AmKomEPGsPO6T9m7CP/18tn3b6DmwoAGDUthsAQS5/sIYQQQgghBg8JQA1i1SUtJuBFD+wEvJaa+kCdbB2AysjXm9xOTgoDYPGEWADWHCrux9MJIcTg9czuZ6huqGZ8xHjOLgkHIHDmTBRDx9+Opy6+noTXXqIo1kJ4jYrjvp+yecVfWy86uhb+cyFU5kDEKPj2ahh1DgCO2lqyt2wCwGybyogJ7U8kfS/7PQBmzx3DqEP/xeyqpTY0hW0fV1KWV9vuY3rK3eAha1shAOkLpUxbCCGEEGI4kADUIOYtvxssE/C8YpK9faBOC0B5M6CS9Eay5zcGoNYdLkZVtX48oRBCDD4Hyw7ydtbbADw09yEcu3cDYJs1s8vHjpwwh+nvfUrO+HACXBD2i2f5/KkfoKoq7HwRXr0WnFWQfBbc8xXEjGved+NaPG4XijGa5PQJmK3GNtc/VnmM3cW7MSpGYlYUkFqwi7TMfxIabaW23Mm7v99JTmaZf/4igKO7S3Da3YREBpDcQUBMCCGEEEKcWSQANYiV5zf2fxok5XdezZPwmgNQxdUOimucKApMTNADULNTIwm2miitbWB/Y3BKCCGGI03TeHLbk2hoXJx6MbPiZlG/cxcAgTNn+XSN8Ogklqz4iqPnjsEAjHxhNZ/eNR/Xhz8EzQNTboA7V0JQVKt993/1OQBGyxRSp8a0e21v9tMS6yxGfbYSAPW2m7j+4bkkjQvH5fDwyTN72b/uVE//ClrxNh+fuCABZRD9gEUIIYQQQvQdCUANYoOtAblXdHIwALUVTupr9NHgmY3ld2NigrFZ9N72FpOBRWn6xCYpwxNCDGefHf+MXcW7CDQFsnz2chqOn8BTUYFisRAweZLP17FYbVzy7EpybzsHFRizrYrVW+OpnvNDuOZfYLK2Wl907AgluScAI0bLBFKnRLW5psvjYuVRPeh09ooKAjwN5CSMZfF3byMgyMzl/zOdCWfFo2nw9ZtZbFiR1aus1soiO3lZlSgKTDhbyu+EEEIIIYYLCUANYk0BqMTgAT5Ja5YAE+FxjY3IG/tAZbRoQN6Stw/U2sMSgBJCDE92l52ndz4NwD1T7iE+KJ76XTsBCJg6BYOlew24DXXFXBR7mMrza3GaITXHwM7fr+TUkT1t1u5fo2c/GSxpRCZGtdtPcO3JtVQ4K5hdEMLkzIOoKIx49OcYGvtSGU0Gltw5kXlX6o3S9605xWfP7qPB4e7Wub0Obtabj4+cFEVIZECPriGEEEIIIYYeCUANUqqqUemdgJdgG+DTtBXTmAXlLcPLyPf2fwprte688Xq5x75TVRTXOPrxhEIIMTg8v/95iu3FJAUnceekOwGwN5bf2Xwsv2tSmAH/Ph/yd7NgpAnzb+6lMsRAfKGTUzffxv717zctdTkcHNq0HgCjZTIpU6LbveR72e+hqBo3feIB4Mjc85l83txWaxRFYfbFqVx4zySMZgMn9pfx/tO7qK3o3uu6x6Ny6Bs9AJW+oP1pfEIIIYQQ4swkAahBqrqkHo9bxWQ2EBo1eCbgeUU39YHSJyNl5OkleJMSWwegYkMCmDpCv23d4ZJ+PKEQQgy8k9UneTHzRQB+NudnWI16iZy9MQPKlwbkTbK+gP9eBNWnICoN7v2KSVcuJ+XNNyhIsBJWq6J+7xE2vPI7AA5v2UhDfT0GUwQGUzKpk9uW3+XX5rM5fzNL92iMLKmm1hzIgsf/X4dHSJsdx1U/nkFgiJnSk7W88+SONgMpOpOzvwx7dQOBIWZSprY9jxBCCCGEOHNJAGqQ8jYgj0gIGpQNWpsakZ+soaKugbzKegDSTyvBA1g8vrEMT/pACSGGmd/t+B0u1cX8xPksTl4MgLukBFdOLigKgdOn+3ahbf+GN26EhlpIXQT3fAmReklc4pipzHn/C05MisTihujfvsCqX9/XXH5nnoTVZiZ+bFiby35w5ANs9So36YlSlN5wF9Ej4jo9SvzoMK57cDYRCUHUVTXw3h92cmyPbz9g8DYfn3B2Akaj/BdECCGEEGI4kf/9DVLlBXpm0WBrQO4Vk6wHoKpL6tl3rAKAlCgbYYHmNmuXNPaB2pBdSoNb7b9DCiHEANqYt5F1J9dhUkw8OOdBFEX/YYJ9124ArGlpGMPaBoVaUT3w2YPw6U9BU2H6bXDbexAY0WpZSHgsS9/4imMXTAAg6p0t5B8+CIoBoyWd5ImRbQI+HtXD+0fe58avVUIcKvmRiSz92Xd8em6h0YFc+7NZJE+MwN2g8tlz+9mzOhdN67g5eW2Fk5yMMkDK74QQQgghhiMJQA1S3gyoyMTBGYAKCDITEqU3jz1wsBSAyYntv5GakhRGdLCVWqebHSfK++2MQggxUFweF09tewqAWybewujw0U33eRuQB3ZVfuesgTduhq3/1D8+/1G48hkwtd+03GwJ4NK/vc/Je5eRG6Vno5oMCSiG4Han331T8A2W4wVcuFsPGoX89EHMVt8bolsDTVz6/WlMWpQIGmx65wjr38hC9bT/g4ZD3xSgaZCYFt40yEIIIYQQQgwfEoAapJom4A3SDChoLsMrOKE3IJ+U1Lb8DsBgUJqaka+RMjwhxDDw+qHXOVF9gsiASL4zrXVWkU8NyKtOwX8vhuzPwRQA178Ii5aD0nVJ9pL/+R2nRuivuUrAHNBUDOacNuvePfwOd3/pwaBB9sR5zL3mQt+fYCOj0cC5t4xnwXVjQYHMr/P4+O/7cNa3npCnqRoHN+vld+kLErq9jxBCCCGEGPoGNAD19ddfc/nll5OYmIiiKHzwwQet7r/rrrtQFKXVr2XLlg3MYfuR6lGpKGqcgDdIM6CguQzPUaxPQeooAwqay/DWHJYAlBBDnap6OJm5j4Ob1nMycx+q6hnoIw0qpfWlPLv3WQB+NPNHhFhCmu5T6+pwHDwItGhArnrg+AbY/47++6kd+qS7ov0QFAN3fQKTrvZ5/6M7tuJ2ujAHBGEwpxJak0vlfd9iz1dv4nQ6efeVZ/n3k8uJeO1LJuWC02hi+m9/3uPnqygK05eO5OL7p2CyGDh5oJz3fr+T6tJ6VFUj73AFW1Yeo7rUgTnAyOiZsT3eSwghhBBCDF2mgdy8rq6OadOm8a1vfYtrrrmm3TXLli3jhRdeaPrYarX21/EGTFVJPapbw2QxEBIZMNDH6ZA3AyrYrkIoTGqnAbnXwrRoTAaFYyV15JTVkRI1eANrQoiOZW/dzJoX/0VteWnTbcGR0Sy56z7S5s0fwJMNHn/e+WfqXHVMiZ7ClWOvbHVf/b594PFgSkjAnJgIB1bCqgehOr/FKgXQIGYi3PIWRKR0a39v8/GwuLnUVhuwuA4TYtdw/+Ax9loeI93Ren3W+NHckD6mB8+0tdHTY7j6JzP55B/7KM+v463fbMNoNlBf42pao6kauZlljJkhQSghhBBCiOGmRxlQGRkZHd53ehZTZy6++GJ+85vfcPXVHf9k12q1Eh8f3/QrIiKiw7VnCm/5XUT84JyA5+UNQEWqCiNDAogK7jg4GBpgZk5qJCBleEIMVdlbN7Pyj4+3Cj4B1JaXsvKPj5O9dfMAnWzw2Feyjw+PfgjAw3MfxqC0/jbbXH43Uw8+rbjjtOATQGMj74U/6nbwqaq4iJz9ewCorxsLwFm//D4nkgIxqRByWvBJAyYfyOKVvzzWrX06EpsSyvUPzSY4KoAGh6dV8AnA3aCy6rkMju6W7wNCCCGEEMNNjwJQF110EcePH29z+7vvvsutt97a60O1tG7dOmJjYxk/fjwPPPAAZWVlfr3+YDTYG5B72UItEGhEQWFmWNdnbSrDkwCUEEOOqnpY8+K/Ol2z9qV/DetyPFVTeWLrEwBcNfYqpsRMabPG24DcNmuGnvlER1PjFPjqV3p5XjdkrFsNmkbsqHQ8nhBsoRbiRscQUuVod6fGXCtSX12B0+ns1l4dsYVZ0TpoRO61cUU2qtrxxDwhhBBCCHHm6VEJ3j333MPSpUvZtGkT8fHxALz11lt861vf4sUXX/Tb4ZYtW8Y111zDqFGjOHr0KI888ggXX3wx33zzDUajsd3HOJ3OVv+Jrq6uBsDlcuFyudp9zGBTmlcDQFhcwKA/c22gQnA9pBpNXZ510Vg9A2rLsTIqa+sJsg5oBagQohtOHchok/l0upqyUnL272NE+uR+OtXg8sHRD8goyyDYHMz3pnyvzWui5nZj370HAEusBlmnZz61Wg3VebiPfY2WstCn/VXVQ8baLwAIjp5BdSUkp0fw8dvPM6m242CPAYiuUfnorX9z5c33+7RXZ/KzK6mrbOh0TW2Fk5OHSklMC+/1fkIIMVwN9vcJQghxuh5FAB577DHKy8tZunQpX3/9NatWreKee+7hlVde4dprr/Xb4W666aamP0+ZMoWpU6cyZswY1q1bx/nnn9/uY5544gkee6xtKcEXX3yBzTY0xj4XZtkAI0dPHSD/0/0DfZxOHW0IYBpm1PwyPv30007XahpEWY2UOeFvb3/J1Ej56bcQQ0XNiSM+rdu0bg0hJ3L7+DSDT71az59r/gzAIuMitq7d2maN9dQpUurr8QQEcDB3P7N9uO6eDZ+Tl1nt0xnq8k9SW16GwWKlKE8vVy91niA3ezeTfHj8sX27+TSs89dxX9jzTUBgl+s2r9+GLdvd5TohhBDts9vtA30EIYTolh6noPztb3/j1ltv5ayzziIvL4833niDK6+8susH9sLo0aOJjo7myJEjHQagHn74YZYvX970cXV1NcnJyVx44YWEhnbcJHuwUD0q//1iM6Bx4eXnEhI1eJuQ1zd4eObrtUwDYoyhXHLJki4fs5NDvLIll5rgkVxyiS9viYQQg8GpAxm8t3ltl+sWnLdkWGZAPb3zaeqq60gNTeWXF/8Ss9HcZk3lq69SCoTMmcPEiaPAhzjd9EUXMc3HDKhP/vIUAOPnLeZ4hgWDUeHyW5bw2fvH4eOu+3ONnjqDSy65xKe9OpOfXcnHe7v+4cn8c+dKBpQQQvSCt9JDCCGGCp8DUCtXrmxz2zXXXMOGDRu4+eabURSlac0VV1zhvxO2cOrUKcrKykhISOhwjdVqbXdSntlsxmxu+4ZgsKkoq0P1aJisRiJigwd1E/L9BbUUGvUspppiBwoGTOb2SyO9lqbH88qWXNZnl2IymVCUwfv8hBDNUqZMJTgyutMyvJCoaFKmTMVg6Px14ExztPIob2W9BeiNx20B7WfbOvfsBSAoORDj6l90cVUFQhMxjT4HfPj7rKus4Piu7QCExc2GDDuJaeEEhQRy+Y33su1vzxJZo7bb+FEFykMMXH7jvX75Ppk8IZqgcCt1lR33lAqOsJI8IRrDIP4eJ4QQg91QeG8jhBAt+RyAuuqqqzq877///S///e9/AVAUBY/Ht6aptbW1HDnSXNZx/Phx9uzZQ2RkJJGRkTz22GNce+21xMfHc/ToUX72s58xduxYLrroIl+PPeQ0NSCPtw3q4BNAZl4VNYqGywRmt0ZZXh1xqZ1nmc0bFUmg2UhRtZPM/GomJ4X102mFEL1hMBhZctd9rPzj4x2uWXznfcMu+KRpGk9uexK35mZx8mLmJ83vcJ19Z2MD8sLXIbYBEmZAwR7viharG1/7lz3pU/AJ4MDXa1A9HhLGjqc0zwrYSZkcBeg/mDl803XM//cKVFpPH1Ebdztx2w0saueHNz1hMCgsujGNVc91PDF34Q1pEnwSQgghhBhmfJ6Cp6qqT798DT4B7NixgxkzZjBjxgwAli9fzowZM/jFL36B0Whk3759XHHFFYwbN45vf/vbzJo1iw0bNrSb4XSmKC9oDEAlDO4JeAAZedWggCFS//coya3p8jEBZiMLxkYDsFam4QkxpKTNm88Vyx/BGhTc6vbgqGiuWP4IafPaD76cydacXMOWgi1YDBb+d87/drjOdfwYntJSFINGQFQDnPVduPcruOFlCD0tqzc0Ub893bdsYk3T2L9Gbz4+cdFS8rMrAUidEt20JivlGp44dzHlwa2/7ZeHGNj5wE3c/sNHfdrLV2NmxLLs/skEhbf+fh0cYWXZ/ZMZMyPWr/sJIYQQQojBb0DHkJ133nloWseNqD///PN+PM3g4M2AikgcAgGo/CoAokYEU1nspORk1wEogCUTYll9sIg1h4v5wflpfXlEIYSfpc2bT9GJo2x9762m267/f78lMjFpAE81MBxuB7/f/nsA7px0J8khye0vtJdjf+ZuAAIiXRgu/wPMvVe/L/0KmHAp5GyG2iIIjoOU+T5nPgHkHcqkoiAPszWAwPB0VM9RwmICCY/TSwH3nKxkxY5TEHEp33vj5xzY8gHVBbmEJozkshu+5bfMp9ONmRHLqGkxFGRXUlftJCjUSkJauGQ+CSGEEEIMUz0OQH311Vd89dVXFBcXo6pqq/u85Xii+4ZKBpTT7SGrSA84jR0fyY5dZZT6kAEFsHhCDKC/KSqrdRIVfOZmtAlxJqotK2v1cVVRwbAMQL2U+RJ5tXnE2mK5Z8o97S8qOwqv30D9oRIgCNu5lzQHn7wMRhi1qMfn8GY/jZ9/DvlZ+kSklCl6+Z2qavxyZSYA18xI4qy0BEh7oMd7dZfBoJA0PqLf9hNCCCGEEIOXzyV4LT322GNceOGFfPXVV5SWllJRUdHql+gZj0elskh/8xA5yDOgsotqcXk0wgLNjJ+ov9EpzavF41G7eCQkhAUyMSEUTYP1WSV9fVQhhJ/VlOnls4pB/xZSUZg/kMcZEIV1hTy//3kAfjr7p9jM7TQez9kMz58PZUewl+uv6YHnX+PXczjqasnasgmAyYsvICdDDw6mTtbL797bnceek5UEWYw8ePEEv+4thBBCCCFEd/QoA+qf//wnL774Irfffru/zzOsVRXVo3o0zFYjIZEBA32cTmXk6eV3U5LCCIsJxBJooqHeTUVBHdEjQrp8/JIJMRwsqGbNoWKumTmir48rhPCj6lI9cBw/dhwFWYeoKMgb4BP1v6d3PI3D42Bm7EyWpS5ru2Dvm/Dh90F14Q6fTkOlHrQLnDHdr+c4tOlr3A1OokaMxGRNxF5dgMlqJDEtnBqHiyc/OwTAD85PIy50cH9fEUIIIYQQZ7YeZUA1NDQwf/7wazbb17zldxEJQSjK4O6R4e3/NCkpFEVRiEnWmxL70ogc9D5QAF9nleD2IWtKCDE4aKpKTVkpACmTpwFQUTC8MqC2F25n1YlVGBQDD897uPXrtabBmt/C+/eD6oKJV1A/8UEALGPHYIrwbzna/jV6r8QpSy4iN7McgOQJERjNBv625giltU5GRQdx94JUv+4rhBBCCCFEd/UoAHXPPffw+uuv+/ssw15T/6dBXn4HjRPwgMmJYQBEj9Sznkpya316/PTkCCJsZqodbnbmSNmmEEOFvboKj8sFikLypKnA8ApAuVU3T257EoDrx13PhMgWZW0uB7x7D3z9O/3jBT+C61/CvlfvwWSbOcuvZyk6doTi40cxmkxMXHQeJ/Y3lt9NieZIcS3/3XgcgF9clo7V5HtTcyGEEEIIIfpCj0rwHA4H//rXv1i9ejVTp07FbDa3uv+Pf/yjXw433Hgn4EXGD+4AlNujcrCgMQCVpAegYpK9ASjfMqCMBoVzx8XwwZ581hwuZt7oqL45rBDCr2oay++CIyKJGjESgOrSYtwuF6bTvhecid7JeoesiixCLaF8f/r3m++oK4U3b4GTW8Fggsv+BDPvAKB+504AbLNm+vUs+9d+CcDYOWcDgRTn6K/LIydF8t339+FWNZZMiGVxY8apEEIIIYQQA6lHAah9+/Yxffp0ADIyMlrdN9hLxwazoZIBdbSkDqdbJdhqIiVSb7wb05gBVXqqBlXVfBqzvXhCLB/syWftoWIevnhin55ZCOEf1WV6ACokOgZbWDiWwEAa6uupKipoCkidqSodlfxt998A+MGMHxAeEK7fUXIYXrseKnMgIAxueAVGnwuAWl9P/YEDAATO8l8GlMvp4NDGdYC3/K4MNIhODmZLQRVfZ5VgNir8/LJ0v+0phBBCCCFEb/QoALV27Vp/n2PY87hVqobIBDxvA/L0xNCmQFN4nA2TxYC7QZ/kF5nQ9XM4d1wMBgWyimo5VWFnREQ7U6SEEIOKNwMqNCoGRVEIj0+k+PhRKgryz/gA1DN7nqG6oZpxEeO4btx1+o3H1sFbd4CzCiJS4Za3IWZc02Pq9+8HlwtTbCzmpCS/nSV762ac9jpCY+IYOXkqnz+vB7lGpEfy8Mf6n7+9cDSjogf39xMhhBBCCDF89KgHlPC/ymI7qqphDjASHGEd6ON0ytuA3Nv/CcBgUJqm3/lahhduszArRW/Iu/ZQsZ9PKYToC94JeCHRMQBEJOhBlTN9Et6h8kO8nfU2AA/NfQiTwQS7XoZXr9WDT8nz4J6vWgWfAOp37QIgcNZMv2YI71/zBQBTFl+AqsHJA3r/pz1uJ7nlduJCrfxgyVi/7SeEEEIIIURv9SgDCmDHjh2sWLGC3NxcGhoaWt333nvv9fpgw01T/6chMAEv09uAPCm01e0xI0MoPFZFyckaxs+L9+laiyfEsv1EBWsOFXP72an+PqoQws+aMqCaAlCJAFQUnrmNyDVN44mtT6BqKstSlzEndhZ8+Shs+rO+YPJ1cOXfwRzQ5rH2nXoAyp8NyMvz8zh1MANFMTDpvKUUHqmiweHBEmTiT3tPAvDwxRMJsvb4W7wQQgghhBB+16MMqDfffJP58+dz8OBB3n//fVwuF5mZmaxZs4awsLCuLyDaaOr/5EPp2kBSVY1MbwZUUut/65iRwQCU+pgBBbCksTnu5qNl1Dd4/HRKIURfac6A0r92h0MG1KoTq9hVvIsAYwA/mfpdePvO5uDTuQ/Ctc+3G3zSPB7qd+8G/NuAPGOtnv00asYsQqKiOZGhZz+VBhuwuz3MSongyumJfttPCCGEEEIIf+hRAOrxxx/nT3/6Ex999BEWi4W//OUvHDp0iBtuuIGRI8/sHiB9pWKINCA/UVZHXYOHALOB0af1FvE2Ii/JrUFTNZ+uNz4uhMSwAJxulW+Olfr9vEII/6opOy0DKl4PdFQWnJkZUHaXnT/s+AMA94y/ifi3vwUHV4LRAlf/CxY/Ah1krTqzs1FrazEEBWEdN67dNd3lcbvJXP8VAJOXXAhAzn79tXNdTS2KAo9dMWnQZ9IKIYQQQojhp0f5+UePHuXSSy8FwGKxUFdXh6Io/PjHP2bJkiU89thjfj3kcNCyBG8wy8jXy+8mJoRiMraOX0YkBKEYocHhYe/ak8SMCCEhLbzTiXiKorB4Qiyvbc1lzaFilkyI69PzDyWq6iHvYCa1lRUEh0eQNHESBoNxoI8lhjFXgxN7VSUAh2qMfLMnjwijnvlTW1FOg6MeS0Cg3/fVPB7sO3biLinBFBODbfYsFGPffS143A3s2v8KJdW5fF13kmJ7MUmBsdy18QWoOgmBkXDTa5Ayv9Pr2HfuBCBw+nQUk3/K4Y7t2oa9qhJbWDijZ8yhurSeikI7KnDC5OGmOSPbZKcKIYQQQggxGPTof8QRERHU1OhlVklJSWRkZDBlyhQqKyux2+1+PeBw4HGrVBXXA3oQZzDLzGvbgNzrxL5SFBQ0NDa9fQSAoHAri25MY8yM2A6vuaQxALX2UAmapslP7tEnXK158V/UljdnhQVHRrPkrvtIm9f5m14h+kptmf756DaYuePV/U2ZP/cZA7B6HFQWFhCbOtqve1Z/8QVFjz+Bu7Cw6TZTfDxxjzxM6IUX+nUvgNUbn+DJrNcoMrZ+Hbqw6DjWqjKIGgu3rICoMV1eq35ncwNyf/E2H5903lKMJhMn9ut/L3lGD1abiZ9e6J9MKyGEEEIIIfytRyV455xzDl9++SUA119/PT/84Q+59957ufnmm1myZIlfDzgcVBbpE/AsQ2kC3mkNyI/uLmbVcxmontald3WVTlY9l8HR3R1PuZs/JhqryUBeZT1ZRbX+P/QQk711Myv/+Hir4BNAbXkpK//4ONlbNw/QycRw99WOwwBUG4NblZ2Vm/SA9NqtGX7dr/qLL8j74Y9aBZ8A3EVF5P3wR1R/8YVf91u98QmWH3mNotO/M2oaL4bYWB2fBt/+0qfgk6ZpTRlQ/mpAXl1awok9elBryuILADiyVy+JPGZWWX7BOKKCB/f3ECGEEEIIMXz1KAD1zDPPcNNNNwHwf//3fyxfvpyioiKuvfZa/vGPf/j1gMOBtwF5xCCfgKdpGhmNE/AmtciAUlWNDW9ld/rYjSuyUTvoCxVoMXL2mCgA1hzqOFA1HKiqhzUv/qvTNWtf+heqKg3bRf/yqBrvrNcDTDWm4Fb3VZr114NVmzPw+Nj/rSuax0PR40+A1s71Gm8revwJNI9/vhY87gaezHoNDdr2dGr8+CmLA48luM1j2+POz8ddVAQmE4FTp/jljJnrV6NpKsnpU4hISMLl9JCfVaGfP97KbWel+GUfIYQQQggh+kKPAlCRkZEkJuqNZw0GAw899BArVqwgMTGRGTNm+PWAw0FT/6dB3oD8VEU9VfUuzEaFcXEhTbcXZFdSV+ns9LG1FU4Ksis7vN87DW/tMA9A5R3MbJP5dLqaslLyDmb204mE0G07Xo5aUw60F4AKB8BYW8q24+V+2c++Y2ebzKdWNA13YSH2HTv9st+u/a/oZXcd/BBAUxQKjQq79r/i0/Xsu/RMpYD0dAw2W6/Pp6kqGWv1zOMpjc3Ht2zJQ1GhSlFZfu2kNn35hBBCCCGEGEy69b9Vp9PJww8/zOzZs5k/fz4ffPABAC+88AJjxozhL3/5Cz/+8Y/74pxnNG8G1GBvQJ7ZWH43Pj4Ei6n5U6euuvPgky/rFo/XA1A7cyuosrt6ccqhrbaywq/rhPCX4hoHwW69RLbGGNLqvsrGErxwVxXFNQ6/7OcuKfHruq6UVOf6dV1z+Z1/+j/lZOyluqQYa1AQY+fNR9M0Pv/yOACe+AAWpMX4ZR8hhBBCCCH6SrcCUL/4xS949tlnSU1N5cSJE1x//fXcd999/OlPf+Lpp5/m+PHjPPjgg3111jNWRcHQyIDylt+d3oA8KNS3niOdrUuOtJEWG4xH1Vif7Z83lENRcHiEX9cJ4S+xIQGENAagajvIgAp3VREbEuCX/UwxvgVUfF3XlZjQkX5d5+8G5N7m4xMXLsZssfLJvgKCyvRg/SUXjvLLHkIIIYQQQvSlbgWg3n77bV5++WXeeecdvvjiCzweD263m71793LTTTdh7MOx2Gcqj0ulsnECXmSCb71FBoq3Afmk00Z8J6SFExTeeRAqOMJKQlp4p2ukDA+SJk4iODK60zUhUdEkTZzUTycSQjd3VCQRmh4srza1zoCqauwBFag6mBpj9st+hpBgMHTyLUpRMMXHY5vtnwbfVRHJ7feb8m6nacR7NGZOub3La3mqqnBm633x/JEBZa+u4si2bwC9/K6+wcM/PjhIqGZAMypMmxXf6z2EEEIIIYToa90KQJ06dYpZs/T/7E+ePBmr1cqPf/zjQd04e7CrLLajqRqWQBNB4ZaBPk6H9AbkjRPwEltPwDMYFBbdmNbp4xfekIbB0PnnyeLGANS6w8V+a2Q81BgMRpbcdV+naxbfeR8GgwR7Rf8yKBDqaT8Dym0wU2vUMziriwp6vVft+vXk3nY7qGqn6+IeeRillz/40DSNlzNfZvn6n+r9nzStTSBKafz4wXG3YjR1/Tpt370bAEtqKqaoqF6dD+DghrWoHjdxo9OITR3Ns+uPElLhBmDkhAhMFnk9EEIIIYQQg1+3AlAejweLpfk/3yaTieDgwZ21M9g1NSBPsA3qQF5xjZPS2gaMBoWJCaFt7h8zI5Zl909ukwllMCksu38yY2bEdrnHrJQIQgJMVNhd7DlZ6a+jDzlp8+ZzxfJHCAwNa3Of0WwhIW38AJxKDHf1NdVobheg4A5snQEVHxZA7IgkACoK83u1T/lrr3Hyge+i2u3Y5s4l4YknMMW3zvBRzGaS/vJnQi+8sFd7uVU3v9nyG36/4/doaFw/7np+H5BG3GmT9eJU+OPYW1m68GGfruvP8jtN05rK76YsuZCT5Xb+uf4oo136t+/RUzvPmBRCCCGEEGKwMHVnsaZp3HXXXVitepDB4XDwne98h6Cg1r2L3nvvPf+d8Aw3VBqQe7OfxsYEE2Bu/6ftY2bEMmpaDAXZlZTl17HhrSxUt0ZUom9BSrPRwDnjYvhkXwFrDxUzK2X49jlKmzcfp72Oz//5F6JGjGTJ3fez4Y2XKDySxYbXX+Ti7/9koI8ohpmaUr03W3BEBIkRwRwp0V+7AswGNvxsMWv+c4D9OVlUFOT16Pqax0PRk09R8Yo+ZS7s6qtJeOyXKBYLYVdcjn3HTpxHjlD0m9+guVxY0zrPuuzy+TTU8NP1P2Vz/mYUFH4y+yfckX4HysGLueBkPrtmXE9JeBIxoSOZOeV2nzKfvLwT8Gwze18eWJB9iLJTuZisViYsOJcfvnsQQ4NKkkd/HU6ZIgEoIYQQQggxNHQrA+rOO+8kNjaWsLAwwsLCuO2220hMTGz62PtL+K4pA8rHIM1A8TYgn5TUNvupJYNBIWl8BFMXjyB1il56cmCT7xkRSxqn4a0Zxn2gvCobS5lGTJzMyMnTOP/u74CicGDDWvIOHxzg04nhprpU/5oMiorhWGld0+0Ol0qNw01EfCIAFQXdz4Dy1NZx6rvfawo+xfz4xyQ8/luUxoxbxWgkaN5cIm+9heBzzwWg6t13e/xc8mrzuOOzO9icv5lAUyB/Wvwn7px0J0p9BZzcihGYc87PueTcx5gz49vdCj6pTieOffsAsPkhA8qb/TT+rEVsz7OzKrOQMR4jCvrgipBI/zR9F0IIIYQQoq91KwPqhRde6KtzDFtDJgMq39v/yfcA48QFiZzYX8ahbwqYd+VojMau453njY9BUeBAQTWFVQ7iw4bvmyvvG/mIBP2NffzYcUw+7wIy1n7B2hef45bfPi29oES/8WZAqbZw1BqIDdEzYYtrnOSW24lIaCzB62YGlKuwkJPfeQDnoUMoViuJTz1J6LJlHa4Pv/46ateto/L9D4j54Q9RzN1rer6vZB8/WPMDyh3lxATG8Lfz/8akqMam/kfXgKZCzASISOnWdb0cmZloLhfGqCjMKT27hpfTbufQ5q8BmHjeUu75KBOAJWGhUOdoCvILIYQQQggxFHQrA0r4l9vloarYDug/yR7MMr0NyJN8D0ClTInCFmqhvsZFzr4ynx4TFWxl2ohwANYeHt5ZUN438t439gCLbr4DS6CNomNHyFi7eqCOJoah6sYAVK1Zz9acnBRGcqQNgJMV9qZAaWVhPlon0+Raqs/I5MT1N+A8dAhjVBQpL73YafAJIPicczDGROMpK6Nm3bpuPYcvTnzBtz7/FuWOcsZHjOf1S19vDj4BZH2u/57W895S9p07AX36XW/7+h3+5mvcTieRiSNYXWYju7iWKJuF0Eq9AXnKZCm/E0IIIYQQQ4cEoAZQZVE9mgZWmwlb2OCdgFdW6yS/ygFAemLnJXgtGY0GJpydAHSzDG+ClOFpmtbUzDm8sbQJwBYWzvzrbwVg4xsv4airHZDzieHHmwFV5AkE9GmYI70BqPJ6wuISQFFoqK/HXlXZ9fW++oqc22/HXVKCZewYUt96i8Dp07t8nGI2E37V1QBUvvOOT2fXNI3n9z/PT9b/BKfHyTkjzuGli18iPqhFc3PVA0cag7rjLvLpuu3xZwNyb/nd6IXn8+evsgH44YyRNNjdWG0m4kf7/noshBBCCCHEQJMA1AAqL9CDB5EJQYN6Al5Gvt7/aXR0EMHWblVtMnG+HoDKzSyjptzh02O8AahNR0pxuj1drD4z1VaU4XY6UQwGwmLjWt03/aJLiUxKpr6mmm/efn2ATiiGm+oyPQB13KEHyyclhZEcoQejcsvtmMxmQqP1r93OyvA0TaPshRc59f0foNXXEzR/PqlvvIFlRFKHjzld+LXXAFC3YSOugoJO17o8Ln6x+Rf8ZddfALh14q38dfFfCTKflnV6agfUl4M1DJLn+XyWljRVxb57NwC2Wb1rQF6Sc5zCI1kYjCY+q0+ixuFmclIoY9162e3I9EgMPpQ1CyGEEEIIMVjI/14HkLcBecRg7//UWH43qRvld17hcTaSxoWjaXDom87fKHpNSgwlNsSKvcHD1mPl3d7zTFDZ2P8pLDYOo6l10M9oMrH4rvsA2P35x5SezOn384nhx5sBlVWrB0BaluCdqtBLib1leB01ItdcLgp/+RjFTz0Fmkb4jTeS/Nw/MYaEdOssltRUbHPngqpS+f77Ha6rclZx/+r7+eDIBxgUAw/PfZiH5j6Esb3eadmN5Xdjzwdj9/pKeTmPHEGtqkIJDCRgwoQeXcNr/1o9+yl60kzeyqwA4JeXTyI3Q39NlOl3QgghhBBiqJEA1ABqmoA3yANQmU0NyHtW7jFxgf6m9OCmAjS1694wiqKweJhPw2tuQN5+Vkjq1BmMnXM2mqqy9sV/+dxzR4iecLtc1FXqQZBKQzARNjOJYQHNPaDKTwtAFbYNQHlqajj5nQeofOstUBRiH3yQ+F8+2u0m4l7h118HQNU776Kpapv7c6tzue3T29heuB2bycbflvyNWybe0vEFs/SAT6/K73Y1lt9Nm9bj5wXgbmjg4NdrAVijjULT4OoZSYwPtVGWV4uiQMokaUAuhBBCCCGGFglADaCmCXiDvAF5Rp5egtedBuQtjZkRg9VmoqbcwclDvmU0LW4sw1t7uHhYBle8b+AjWvR/Ot15d3wbo9lMbsZejmz7pr+OJoah2rJSABSTBYfByuSkMBRFaQpA5VXW41G15kl4+a1L8BpO5ZFzyy3UbdqEEhjIiGf+RtTdd/Wq9DjkggswhIbiys+n7pvWn/+7inZx66e3cqL6BPFB8bx88cucM+Kcji9WlQdF+wEFxi7t8Znsjf2fbDN71/8pe/s3OOpqMYZGsq4mHJvFyEMXTyAnQx/mEDcqjIDgnge4hBBCCCGEGAgSgBogbpeH6pJ6YHAHoKrsLnIbsxsm9TADymQxMm6u3uz3wEbfyvAWpkVjNirklNk5VlrXo32HsvYm4J0uLDaeOVdcC8C6V57H1eDsl7OJ4cc7Ac9tCwNFYVKiHoyODw3AbFRweTQKqx1NAdPKFhlQ9Xv3cuLGG3FmH8EUG0vKq68Qcv75vT6TISCAsMsv1/dr0Yz842Mfc88X91DprCQ9Kp3XL3md8ZHjO79YdmP204jZENTz0rb6xgl4vW1AnrFGLwfcEzgOTTHwgyVpxIUGNAWgUqZI9pMQQgghhBh6JAA1QCoK7c0T8EIH7wS8zAK9/G5ERCDhtp6fM32h3oz8+N4S6msaulwfbDUxb5T+JmvtMCzD85bghSd0nAEFMPfK6wiJiqG6pJgdK9/rj6OJYaimsQF5lTEYgMlJejDaaFBICtcbkZ8stzcFTCsLC9BUlerPPiPnjjvxlJVhnTCB1BVvEThpkt/O5S3Dq1n9Fa7ycv6x5x88vOFhXKqL80eezwsXvUCMLabrC3kDUGk9L79zFRTgys8Hg4HAadN7fJ3KwgJyM/ahobDDMpbUKBvfWpiK2+XhVGMGaaoEoIQQQgghxBAkAagBUtGi/G4wT8DL9JbfJfas/M4rekQIsSkhqB6Nw1sLfXqMtwxvuPWBUlUPVUV6plhkJxlQAGZrAOfe/i0Atn3wNtUlw+vvSvSP6lL986rIowebWr4eeMvwcsvthMbEYjAacbsayPnrX8j78XI0p5Pg884j9bVXMcfH+/VcARMmEDB5MrhcvP6n+3h277MA3D35bv543h+xmW1dX8TlgGPr9D+Pu7DHZ7E39n8KmDABY3DPs1q9zcdP2pKpNYXwi8vTsZqM5GVV4m5QCY6wEpUU3OPrCyGEEEIIMVAkADVAhkoD8gxvA/KknpXfteRtRn5gY75PfZ2WNAagth0vp8bh6vX+Q0VNaQketxuj2UxIVNflQOPOWsiI9Mm4XQ2sf/W//XBCMdx4J+BVGYIIsZoYGdkc2GmahFdux2A0EharB5lOvvoKABF33M6Ivz+DIahvXuvMV10MQMLaTEwYefTsR1k+azkGxcdvbzkbwWWHkASIn9rjc9Q39n8KnDWrx9dQPR4y160GICN4AovHx7BkQpx+zP16+d3IyVGD+ocWQgghhBBCdEQCUANk6DQg1wNQk3rYgLylcXPiMFkMVBTaKTxW3eX6UdFBjIoOwq1qbMwu7fX+Q4W3gXN4XAKKoesvUUVRWHLX/SiKgawtG8nN2NfXRxTDjLcHVI0pmPTEUAyG5gBIckTjJLyKejyVlQQU6tlSdQEW4n7+/4h/5BEUo7FPznWs6hjfV97CYYbkUngu8SdcN+667l3EO/0u7QLoRWDHmwFl60X/p2O7d1BXWYHdEMCpkFH84nK9XFHTNHIy9NfA1MlSfieEEEIIIYYmCUD1M1XVyDtcQeExPbATHudDicgAqXO6mxqA97YED8ASaGLsLD2r6cCmtmPa27N4vL7+q2FUhtc0Aa+L/k8txaSMYtqFeibI2hefQ/V4+uRsYpBSPXB8A+x/R/9d9e+/f01TACqEyUlhaB4PdVu3UfXxJ6QVHMagqdQeO86Jm24moEhfa7jkIiJvvdUv+3tUD9sLt/PpsU/ZXrgdj+pha8FWbvv0No6689k7RQ/kj1h3qHsX1jTI1ht+96b/k6emBufhwwAEzuh+AMrldrPqy418+tKLABwKHsfdi9IYFa0/r4pCO9WlDowmAyMmRPb4nEIIIYQQQgwk00AfYDg5uruYDW9lU1fZPK3sq5cOcs5N4xgzI3YAT9a+gwXVaBrEhVqJCbH65ZrpC5M49E0hR3YUsej6NCyBnX8KLpkQy383HWfd4WJUVWuVeXGm8jYg72wCXnvm33AbhzZ9TenJHPZ++Skzll3eF8cTg82BlbDqQahuEdQNTYRlT0H6Fb2+vKZpVJc1Z0CdlbeXI+d/D3eh3sstCXjNEoRVddHgbiBkVDIAdUb//Hxjdc5qntz2JEX2oqbbQi2h1DbUoqIyLWYaF/3g21Te/V2qP/2MuIcfxhjsY4+k0myoOAFGC4w+r8dnrN+zBzQNc3Iy5rjuvZavePsTDn/4CjZXbdNt4+uyGVGVDUwAmsvvksaFY7b2TTaZEEIIIYQQfU0yoPrJ0d3FrHouo1XwCcBe1cCq5zI4unvwZfh4y+/8kf3kFT86lIh4G+4GlewdRV2unzsqkiCLkdLaBvY3nudM582ACo/3PQMKIDA4hIU33Q7AphWvYq8eHn9fw9qBlbDijtbBJ4DqAv32Ayt7vYWjtga3U3/dmlJ8ghF/+lVT8MkrrKGOQHcDpuRkxjzyfwBUFOT1eu/VOatZvm55q+ATQHVDNSoqM2Jm8J+L/kP8WedhGT0arb6e6k8/9X0Db/ZTygKw9ryxt33nTgBsM7uX/bTi7U/IfedZAlsEnwBsnnoK33+OFW9/AtBUfpci0++EEEIIIcQQJgGofqCqGhveyu50zcYV2ahq1425+1NGvt6nyR/9n7wURSF9YXMz8q5YTAYWpumNuIfLNDzvG/euJuC1Z8r5FxGTMgpnXR2b3nzF30cTg4nq0TOfaO91o/G2VQ/1uhzP2/+pzmjjOxntB7SUxh3dDifR4/WsnariIjxud4/39agentz2JFq7z0+XX5ePSTGhKArh1+m9nyrfedf3TbIaA1Djel5+By0bkPsegHK53Rz+UP8aPT2v0/vx4Q9fobbGQcERPZicMrnroQRCCCGEEEIMVhKA6gcF2ZVtMp9OV1vhpCC7sn8O5KPmDKjeT8Brafy8eAxGheKcGkpP1XS53jsNb+3hMz8A5XG7qC7Wn2d4N3pAeRkMRpbcfT8A+9Z8TtGxI349nxhEcja3zXxqRYPqPH1dL3j7P3k0E9H1HWfVKQAlxRiOncBksaJ6PFSXdJ3l2JFdxbvaZD6drshexK5iPfgTduUVYDbj2LcPR2M/pk45qiD3G/3PaRf2+JxaQwP1+/TG/7ZuTMD7au0WbK7aNsEnLwWwuWr57O11qKpGRLyNsJjAHp9TCCGEEEKIgSYBqH5QV9158Km76/qDw+Uhu1gvC5nsxwwogMAQC6OmxQBwYFNBl+u9jcj3naqiuMbh17MMNpVFhWiaijkgkKDwiB5dY8TEyUxYcC5oGmteeA5NG1yZdcJPan0M7vi6rgPeDChV861loKe0lIj4BKC5nLQnSuwl3VpniooiZMkSwMcsqKNrQXVD1FiIGtPjczoOHEBzOjGGh2MZPdrnx5UW+/b8yo7or5EpMv1OCCGEEEIMcRKA6gdBob418PZ1XX84XFiDR9WIDLKQEBbg9+unL9TfoGZtLcTd0HmJUGxoAJOT9CysdYd9e9M2VFV6J+DFJ6L0YiT8ObfejclqJT/rIIc2rvPT6cSgEhzn33UdqGnRgNwXppiYpuy9ivyeB6BibDHdXuctw6tauRLV2UVAP/sL/fdeTL8DsHvL72bO7NbXbHSsb8/PU2UGIGWKlN8JIYQQQoihTQJQ/SAhLZyg8M6DS8ERVhLSwvvnQD7IyNdLbSYlhvYqENKR5AmRhEQG4LS7Oban66DSksYsqLVneB+oiny9/1NED8rvWgqJiuasq28EYP1rL9BQb+/12cQgkzJfn3bXYREX+nS36HG92qa6RP+aa1CsaJ28FqhATWgkttmzmiY49iYDambsTOJsHQfPFBTibfHMjG3uuxQ0/2xMiQmoVVXUfLm644uranMAalzPy+8A7Lv0AJStG/2fAM5ffBb1pqAOO1xpgMMUjOaOxxJgJGGsfzNRhRBCCCGE6G8SgOoHBoPCohvTOl2z8IY0DAb/B3p6KiNPb0Du7/I7L8WgMHGBngV1YFPXb1IXN/aB2pBdSoNb7ZMzDQbeN+y9DUABzLr0KsLjEqirKGfr+yt6fT0xyBiMsOypxg86eO3wNMB/L4SSrB5vU1qkl/Bdk7URpYNyTq3xBO+efQOK0UhE4wTH3kzCMxqM3J5+e7v3KY3P98G5D2I0GJtvNxoJv+ZaACrfeafjixfshroSsITAyPk9PqOmadQ3TsAL7OYEPLPJREzKqKYG7q2u2/h7/KQrUBQDyemRGI3y7VoIIYQQQgxt8j/afjJmRizL7p/cJhMqOMLKsvsnM2ZG7ACdrH2Z+d4G5H33U/cJZyeAAnmHK6ks7jxDZ9qIcKKCLNQ63ew4Ud5nZxpoFQXeAFT3J+CdzmSxcN6d9wCw85MPehUMEINU+hVww8tty+xCk/TgVEQqVJyA/yyFY+u7fXlNVanNPQFAcEMDoZdcQuLTT2OKj2+1TomN4zdz7+TT8AlomtacAdWLzzlN01iTuwYAq7H162acLY4/nvdHlqYsbfO48GuuBkXBvmULDbm57V88qzH7acx5YLL0+IwNx4/jqaxEsVoJmDSpW48tyT1B3fEDANQbWpc515uDGXndA4Sg/+BCpt8JIYQQQogzgW9dZYVfjJkRy6hpMfpUvGonQaF62d1gynwCcHlUDhXo0+m8vZf6QkhkACPTo8jNLOPg5gLOvqrjRsAGg8J542N5d9cp1hwqZv7YM/MNmTcDKjy+9xlQAKNnziV1+ixO7NnJupef5+oHH/XLdcUgkn6FHnB6fglYQ+Gm1/XyPIMRplwHb94CJ7fCq9fAZX+Gme1nFZ1Ora/n5M8epMHdAIrC0XkXM+/pJ1AUhdBlF2HfsRN3SQmmmBiUqdPZ/NiX4HRTVe9qyuCrKSvF1eDEbOl+f7tVJ1axq3gXAcYA3r/yfQrqCiixlxBji2Fm7MxWmU8tmRMTCVq4kLoNG6h89z1if/yjtouyP9d/73X/p8bspylTMFh8D2RpmsbaF/+FpqoET5jJM445zA6o4MpxIUTHxnD+4rNoqPPw4lebAGlALoQQQgghzgySAdXPDAaFpPERjJsTT9L4iEEXfALILqqlwaMSEmBiZKStT/fyNiM/tLkA1dN5ad2SxjK8NYfPzD5QLoeD2rJSACISe58BBaAoCovvvBeD0cixXds5tnu7X64rBpm6xq+JyNEwapEefAIIioY7VsLk6/SJbyu/D18+qvdA6oS7pIScO++idP1aUBRUFNQ7v9PUD04xGgmaN5ewyy4laN5cbIEWYkL0INPJ8noCQ8Ow2oJA06gq7HrS5ensLjt/2PEHAO6Zcg8jQkYwJ34Ol4y+hDnxczoMPnk1NSN/7z00t7v1nTVFkL9b/3Na7/o/1XsbkM+a1a3HZW/dxMnMfZjMFmqnXYKmGBg1ZRq33Xo1yy5YiNlkIiejDIDYlBBsoT3P0hJCCCGEEGKwkACUaKOvG5C3lDolmsAQM/bqhqY3XB1ZNC4ak0HhWEkdOWV1fXqugeDNfgoIDiEwOMRv141MHMHMS64EYN1L/8bjdvnt2mKQqG4sdQttJ3POHADXPg/nPqh/vOnP8Pad0NB+2avjcBbHb7wRx759OMP1EtwqcyhTRoR3eoTkiEAAcsvtKIrSlMXXk0bkz+9/nmJ7MUnBSdw1+a5uPz5k8XkYIyNxl5RQ+/WG1nce+VL/PWE6hPRuQmBPGpC7nA7WvfIfAOZceS1H6/Upd+PiWn/Ne18PZfqdEEIIIYQ4U0gASrSRmdf3/Z+8jCYDE87yNiPvPFMiNMDM7NQIANacgdPwKv3YgPx0Z11zE7awcCoK8tn16Uq/X18MsOrGr532AlAAigKLH4Gr/6VPxju4El66TM8GaqF2wwZybrkFd34BlpQU1Psf0G83hTAhvvOgqDdb8mSFHtjyfh57+5r56mT1SV7MfBGA/53zv236P/lCsVgIu+oqoJ1m5FmN5Xfjeld+5youxpWbC4pC4PTpPj9u24fvUlNaQkh0DHOuuJasoloA0loEoDxulZMH9V53qVOk/E4IIYQQQpwZJAAl2sjI79sJeKfzTsPL2V9KbYWz07VNZXhnYACqqQG5n/o/tWS12Tjn1rsB+ObdN6mtOHMbuQ9LNY0BqJCEztdNuxHu+BACIyFvJzx/PhRlAlD++uucvP87qHV12ObMIfWtNzlR4wDAEBxBgLnzsrdkbwCqvHcBqN/v+D0u1cXZCWezJHlJtx7bUvh1+jS82vXrcRU1vl64G+DoWv3Pvez/VL9LL+OzjhuHMdS3XnlVxYVsX6kHxM67/dtoRgsnSvVszrTY4KZ1+UcqcTk8BIZaiEn2XzakEEIIIYQQA0kCUKIVj6pxoCkA1XcNyFuKiA8iYWwYmgaHtnSeBeUNQG09Vk6d093p2qHGnxPw2pO+aDEJY8fjctSz4fUX+2QPMUA6K8E7Xcp8uGc1RI2FqpNo/76Iop89QNGvfg2qSthVVzHyP89jDA+nqED/egyJjunysskRegAqtykA1f1JeJvyNrH25FpMiomH5j7UqxJg6+jRem8mj4eqDz7Qb8z9BhpqICgGEmf0+NoA9l16A/LulN+tf+W/eFwukidNJW3eAo6X1uFWNUKsJhLCmifh5exvLL+bHIUyCPsECiGEEEII0RMSgBKtHC+tpd7lIdBsZFR0cNcP8JP0hfob54Ob8tFUrcN1Y2KCSY4MpMGjsulIaX8dr19436iH90EJHoBiMLDk7vsBOPD1GvKzDvbJPmIAVPuYAeUVNQa+/SVq4gJOrTFTvnIdADE/+iEJTzyO0jjRzdsUPyGp6+t6M6BOVdQDzZl8lT72gHJ5XDy57UkAbp54M6PDR/v2XDrhbUZe+e67aKoK2V/od4y9AAy9+/bX1IB8pm8NyHP27SF722YUg4HFd92HoihkFenTRsfGBbcKtnn7P6XK9DshhBBCCHEGkQCUaCUjT89+Sk8MxdiPP3kfMzMWS4CR6lIHeVkVHa5TFIUl4/UsqLVn2DS8isK+zYACiB87jsmLLwBgzQvP6W/KxdDnLcEL9f1zx1XdwIlPLdTmB6AYNJLmlxOdmoOiNX9OeKr1Us3Ro0Z0eb3kSL0JeV5FPR5Vawqk1lVW4LS33/C8pdcPvc6J6hNEBkTywLQHfH4enQm96EIMwcG4cnOxb9veov9T76bfeWrrcBzUA7i22V0HoDxuN2tf+hcA0y+8lJiRqQBkNwagxsU2l9lVFtmpLLJjMCokT4zs1TmFEEIIIYQYTCQAJVrJaGpA3j/ld15mi5Fxc+OBrpuRL24sw1t7qARN6zhbaihx1NVSX63/3UfE+5jF0kMLb7oDS6CNomNHyFi3uk/3Ev3AWQNOPXBMqG+fO44DBzhxw404Dx3GGBnJyP+9nNCRDtjyD3jzVnDWUlztILBBD5BMSkvp8poJYYGYDAoNHpWiagcBQcEEhup95LrKgiqtL+XZvc8C8KOZPyLE4p++RwabjdDLLtXP8PqLUJYNBhOM6XlvKQDHvr2gqpgTEzHHx3e5fu8Xn1B2KpfAkFDmX39r0+3NDcibs0292U8JY8OxBJp6dU4hhBBCCCEGEwlAiVYy8vUgyKR+akDekrcM7+juYhy1rg7XnTU6ikCzkcJqBwcKqvvreH2qsrH/U1BEJJZAW5/uFRQewfzrbwFgwxsv4air7dP9RB/zlt9ZQsDadeCmZs0aTtx6G+7iYixjx5C64i1sd/8ernsBjFbI+gxeWMbhzD1YNP3rMDYhrsvrGg0KSRF6FtTJbvaB+suuv1DnqmNS1CSuHHtll3t1R/h11wNQs2YDHqcCI8+GgN69vtm95Xezus5+sldVsvnt1wFYePMdBAQ3B5uyihszoFpMwDuxXy97lOl3QgghhBDiTCMBKNFEVTUyG0vwJif2fwAqZmQI0cnBqG6Nw9sKO1wXYDayYKz+5mztGTINz/sGvS8m4LVn+kWXEZmUTH11Fd+880a/7Cn6SE1jdlEXDcg1TaPsxRc59b3vo9XXEzR/Pqmvv45lRGN53eRr4K5PwBYNhftJ/vTbAHisQZgtVp+O4m1EfvK0PlAVnWRA7S/ZzwdHPgDg4XkPY1D8+20pYFI61okT0dweqnJskNa78jvoXgPyjW++jNNeR+yoMU3lrwBOt4ecMj1Q5w1ANTjc5GdXAnoDciGEEEIIIc4kEoASTU5W2KlxurEYDa1KQvpT+gL9DeuBjfmdltd5y/DWnCkBqKb+T/0TgDKaTCy+6z4Adq/6iLJTuf2yr+gD3gyoTsrvNLebwl/9iuInnwJNI/yGG0h+7p8YQ08rtU2eA/d+BTETcDf2bQq2mX0+ircPVPMkvMYAVEH7AShVU3li2xMAXDHmCqbFTPN5L18pikL4VZcBUHnUhtbLAJTmclG/dx8AgTM7D0AVHs1m/9ovAVhy1/0YDMam+46X1uFpnIAXF6oH+E4drED1aITGBBIe17eZkEIIIYQQQvQ3CUCJJt4G5BMSQjAbB+ZTY9zcOIxmA+X5dRSfqOlw3eLGRuS7T1ZSXtfQX8frM9436OH9lAEFkDp1BmPnnIWmqnpD8jOkn9aw482ACmn/c8dTW8vJ7zxA5RtvgqIQ+7OfEf/YL1HMHQSWIlLhW5+T4dan0CW5j8A3fwcfPj+aJuGdFoCq7CAAtfLoSvaX7ifIHMSPZv6oy+v3VNikEBSjhrPKjKPA2atrOQ4dRrPbMYSGYh07tsN1mqqy5sXnQNOYuGgxSRPSW93fsv+TdwLeiYzG8rvJUa2m4gkhhBBCCHEmkACUaNLU/2kAyu+8rDYzY2fqwaUDmzou20kMD2RCfAiaBuuzhn4WlDcAFZHYdxPw2nPu7fdgNJvJzdjLke3f9Ovewk+qvSV4bTOgXHl55Nx8C3UbN6IEBjLib38l6lt3dxncqNKCeKd+nn5ZsxM+fwQ++Ql43J0+rrkEr+seUDUNNfx5558B+M7U7xBji+n02r1hzN9AyAi9LLDynXd7da16b/ndjBkoho6/hR7cuI6CrEOYrQGcc8tdbe5vmoDXWH6naVpTA/IU6f8khBBCCCHOQBKAEk2aJuAl9e8EvNOlL9TfSGdvL6LB0fEb3iWNZXgrdpziwz15fHO0DI869LJ4NE3r9x5QXuFx8cy5/BoA1r70PMf37uTgpvWczNyHqnr69Sx9zaN62F64nU+Pfcr2wu14zpTnV12ApkJdnoeqjz+hbus2NI+H+n37OH7jTTizszHFxJDyyiuELF3q0yUz86sIcutBpNBJSwAFdvwHXr8BHNWgeuD4Btj/jv5749+lNwPKW4IX3jjR0VFXS31N64EBz+19jjJHGamhqdw68Vb6jKZB9peEj9HPVP3JJ6h1dT2+nC8NyBvq7Xz92gsAnHXtTQRHtg0oZTUGoNLiQlBVjQMb87FXNWAwG0gYE97j8wkhhBBCCDFYyYxnAehBkMz8gWtA3lLC2HDCYgOpKq7nyM7ipr5Qp7NZ9H4q3xwt45ujjaPLwwJ49PJ0lk32bRz9YFBfXUVDvR0UhfC4/j/33CuvZ88Xn1JTWsx7jz/adHtwZDRL7rqPtHnz+/1M/rY6ZzVPbnuSIntR021xtjgemvsQS1N8C8oMVtW7jlG0Og53/QpgBQCG8HDU2lpwu7GOH0/yP5/FnOD751ZGfhUhbj1AEjLnGghdDO/dC0e/gn+cDaoLapv/LglNhGVPMTJlGQBF1U4cLg8B1gCCo6KpLSuloiCPwBA9uH2s6hivHXwNgAfnPojZ6HufqW4r3A81+dgSbVhSRtKQk0v1qlWEX3ttty+laRr2XXoAqrMG5Fvee4u6ygrC4xOYeUn7U/2yG0vw4qo9vPzIZuoq9dJA1aXy2qNbWHRjGmNmxHb7jEIIIYQQQgxWkgElACioclBe14DRoDA+vutR7n1JUZSmoNPBDsrwVmUU8PQXWW1uL6xy8MCru1iVUdCnZ/Sn8sbsp9DoGEwWS7/vf2LvLhy1bftt1ZaXsvKPj5O9dXO/n8mfVuesZvm65a2CTwDF9mKWr1vO6pzVA3Sy3qv+4gvyPqrEXd/6pVytrNSDT+nppLz2WreCT6D3gwtx6wGS0KgYmHgZ3P0pBIRD9anWwSfQG6GvuIOInM8IagwM51WeNgmvscxU0zSe2vYUbs3NeSPOY2HSwm4+627K/hwAZfS5hF9/PQCVb7/To0u5cnPxlJaimM0ETJ7c7pry/Dx2fvIhAIvvvA9TO722HC4PJ8rqSGswkLMytyn45FVX6WTVcxkc3T30y4uFEEIIIYTwkgCUAJrL79JigwkwG7tY3ffGnxWPwaBQeKyasvzaVvd5VI3HPjpAe8V23tse++jAkCnH8zZo9vbL6U+q6mHNi//qdM3al/41ZMvxPKqHJ7c9idbOZ4v3tqe2PTUky/E0j4ei3z7e+FH7PZ085eUYAgO6fe3MU+UEefQytZDoxt5M8VPBZO3oNPopVj1MSoS+pqNJeOtOrmNz/mbMBjP/O+d/u322bsv6Qv993IWEXXklmEzU79mDMzu725fylt8FTJmCwdr+38W6l/+N6nEzasZsRs+c0+6a46V1aCosdXQecN64Iht1iLyOCSGEEEII0RUJQAkAMrzld0kDW37nFRRmJXVqNAAHN7XOZtp2vJyCKkeHj9XQM7q2HS/vyyP6TVP/p4T+7f8EkHcwk9ry0k7X1JSVkncws59O5F+7ine1yXxqSUOj0F7IruJd/Xgq/7Dv2Im7qIiOgk8A7sJC7Dt2duu6tU43JUXFKIDBZMYW2viakLO5beZTKxpU57HYdhRoMQnPmwFVmI/T4+R3238HwJ2T7mRk6Mhuna3b6srg1Hb9z2kXYoqJIWTxeUDPmpHbvQ3IOyi/O7ZrO8d378BgNHHeHfd2eJ2sohpGuA0Eq503g6+tcFKQXdntcwohhBBCCDEYSQBKAJDpbUCeOLANyFuauEAvGzq8pRCPS226vbim4+BTS76uG2gVhY0ZUP3cgBygtrLCr+sGmxJ7iV/XDSbuEt/O7Os6r4MF1QS7GsvvoqObJ711GnxqNjpAf+zJisYSvMTmSXgvZ77MqdpTxAbGcu+UjgM0fnNkNaBB3GQIGwFA+HXXAVD14YeoDQ3duly9twH5zLYBKLfLxdqX9GzCWZdeSWQnEy2zi2oJ0joPPnnVVTu7XiSEEEIIIcQQIAEoAehNh2HwZEABjJwURVC4FUedi2N7m99Ex4b4VlLk67qBVjGAJXjB4RF+XTfYxNhi/LpuMDHF+HZmX9d5ZeRVEeLxBqBaPDY4zqfH2yL1QGpumXcSnrcEL49/7/s3AMtnL8dmtnXrXD3S2P+JtAubbgpauBBTXByeykpqv/rK50u5y8tpOH4cANuMGW3u3/Xph1QWFhAUHsFZ19zY6bWyimqoU3wrrQsK7ajsUQghhBBCiKFFAlCC4hoHRdVOFAUmJgyeDCiDQWHifD0L6sDG5mbkc0dFkhAW0GHhkYI+DW/uqMi+P2QvaapKZaFeYhg+ACV4SRMnERwZ3emakKhokiZO6qcT+dfM2JnE2ToOnCgoxNvimRnb8USzwco2examiGBotxsaoCiY4uOxzZ7VrevqDcgbJ+BFtZjCljJfn3bX2VdeaBKW0XpT8ZMVjQGouHgUxYDb6YS6BmbEzuCSUZd060w94nE3ZkAB4y5qPqXRSPi11wDda0Ze3zj9zpo2FmN4eKv7asvL2PLumwCcc+vdWAI7D65lF9dyyqRiDu58+l9whJWEtPBO1wghhBBCCDFUSABKkNnY/2l0dBBBVtMAn6a1ifMTQIFThyqoLtVLeowGhUcvTwc6fiv86OXpGA2+lbgMpJryMtwNTgxGI2ExvmWY+JPBYGTJXfd1umbxnfdhMAx8Y/qeMBqMPDT3oU7XPDj3QYxD8PkpRiNx10zp4E79cz/ukYdRjN17bpn5VQQ3TsALaZkBZTDCsqe8G7TzSA2WPUlytD5F09uE3GgyY43UMyvD6sw8PPdhFKUfvjZPbQNHFQRGwIjWzcDDrrkWFIW6zZtpOHXKp8vZm8rv2gb0vn79RVxOBwnjJjBx4XmdXsfh8pBTVoemwOyrR3e6duENaRiGwOuYEEIIIYQQvpAAlGju/zSIyu+8QqMDSZ6gl38d3NzcjHzZ5ASevW0m8WGty+zMRoVnb5vJssndGzs/UCob+z+FxcZj6GagwF/S5s3niuWPdJgJFRrb/4Exf5oQOaHd2yOsEfzxvD+yNGVpP5/If0JHKSQtqMAY1LpMyxQXR9Jf/kzohRd28Mj2OVwesotrCXG3U4IHkH4F3PAyhHbw9RWRwoiIQABqHG6q7C48qocCi/4aszh4HhOjJnbrTD2W1Vh+N3apHjxrwTIiiaCzzwag6r33fLpcRw3I8w4d4OCGtaAoLLnr/uaeWR04WlKLqkFYoJkZ8xMJCm9bYhccYWXZ/ZMZMyO2nSsIIYQQQggxNA2udBcxIDLyGifgJQ6+ABRA+sIkTh6s4ODmAuZcmorBqL/BWzY5gQvS49l2vJwjJTU8+mEmLo/GqOjgAT6x7wZyAl5LafPmM2bOPH0qXmUFweER7F29isObv2bNC89x02NP9U/WSh94/8j7AMyLn8f90+7nub3PsbVwK0tTlg7p4BMANQWEJjtoSDmXkte/IHD6dGJ+/GNss2d1O/MJ4FBhDR5VI1ytA07LgPJKvwImXNo8FS84Dna8AJnvwqc/w/atVUQHWymtdXKyws6B2s8psFQSQSizrem9fca+y/5C/33csnbvDr/+Ouo2b6by3feI/t73Ov37UuvrcWQeAFpnQKmqhzUvPgfAlMUXED8mretjFenBvXFxwdSUOairdIICl3xnCq4GD0GhetmdZD4JIYQQQogzjQSgxKBsQN7SqKnRBASbqat0knugnNQpzZk6RoPC2WOiOHtMFBuzS/k8s4i3tp/kF5f34xvdXmhuQD6wASjQy/GSJ01t+jg8PpGjO7eSf/gAhzat77K0aDByq24+OPIBANeNu4458XOoc9WxtXArm/I2oWnakA2sAVCtf/64yvXy1KAFCwiaN7fHl8vIqwJNa+oB1SYDystghFGLmj+OHA1Zn8HJLbD/HZIjEymtdXKouJC/Hv4rCUH6FEt7cXmPz9YtlSeh+AAoBhizpN0lweefjzE8HHdREXUbNxJ87rkdXq5+335wuzHFxWFOav5azVj7JcXHj2K1BbHwpjt8Olp2sf53mxYXQk5GGQAJY8IYNW3oNcIXQgghhBCiO6QEb5irtDdwqnFcenri4GlA3pLRbGD8WfFA62bkp7tpzkgA3tt9Cqfb0y9n663mDKj+n4DXlZCoaM66Wp/m9fWr/6XBUT/AJ+q+zfmbKbYXE2YNY8lIPRAxN34uFoOF/Lp8jlYeHeAT9oKmQY1eltpQVAmAJTWlV5fMzK/CojZg9DQA+ueAT8KSYNFP9D9/+XPGhut/fO/4f6lyVhESp5eSeUtO+5x3+l3yPLC1P4zAYLEQduWV+rne6bwZeX2L8jtvwNJRW8vGN14GYP71t2ALC/fpaFneDKjYYE7s1wNQLYPqQgghhBBCnKkkADXMeRuQp0TZCAvsfCLTQEqfr2cdnNhfRl2Vs90154yLIT40gEq7iy8yi/rzeD1W4Z2AFz/wGVDtmXXpVYTFxVNbUc7W91cM9HG67d2sdwG4fPTlWIwWAGxmG3MS9KbUX+d9PWBn67X6CnA7AGg4pX8eWVJTe3XJjLxqQjx6gCQwJBSzNaCLR7Rw9vchIhVqCri2bgUGawH7az4D4K5F3wX0AJSq9kNwOKux/C6t8x5Y4dddC0DN2nW4S0o6XNdeA/LN77xGfU01USNGMu3CS30+WnaRngE1JjKIvKwKAFImR/n8eCGEEEIIIYYqCUANcxneBuSDtP+TV2RiEPGjw9BUjcNbCttdYzQo3DB7BABvbT/Zn8frEdXjoapIDxwMxgwoAJPFwnl33AvAzo/fp6K/Mlj8oLS+lPWn1gNwTdo1re47J+kcAL4+NYQDUI3ldx5zFO6SUgAsKT3PgGpwqxwurGkqv2u3/1NnzAFw0RMAzC54jbD4dwCNi1IvYuHE8zGaTHjcbmpKS3t8Rp802OG4/u/OuIs6XWpNSyNw+nRwu6n68MN212geD/W7dwPNDchLc0+w5/NPAH1KpNHkWzW7w+Uhp3E6YEi1G49LJTjSSmRikE+PF0IIIYQQYiiTANQwl9GYATUpaXCW37WUvlCfvHVgYz6aprW75vrZySgKbDxSysnGN3qDVXVJMarHg8lsISRy8GZAjJk1l9RpM/G43ax7+fmBPo7PPjzyIR7Nw9SYqaRFtG4Ofc4IPQC1p3gPVc6qgThe7zWW37ncenmbMTISY2jPv46zi2to8KhEo3/ddNj/qTPjL4Yx57M60IzblgeamZ/M+gkGg5GwOP3r11t22mdObNAzw0JHQGzXveDCr78OgMq332n3dcWZlYVaV4chKAjruHFomsbal/6FpqqkzZ1PytTpPh/tSHEtmgbhNjOVR/TX3tTJ0UO7D5kQQgghhBA+kgDUMJc5RDKgAMbMjMUcYKSqpJ787Mp21yRH2lg4Vu+nsmLH4M6C8r4RD09I7HJ0+0BSFIXz7rwXg9HIsZ3bOL57x0AfqUuapvFe9nsAXJt2bZv7R4SMYHTYaDyah2/yv+nv4/lHtf750+DUg069yX4CyGychpka4AJ6kAEFoCjYl/6SpyPDARhRPoE4m96/zdtov8+z6LIa+z+NuxB8COyELluGwWajISeH+h1tP7ebyu9mzEAxGsnetpncjH2YzBbOvf3b3TqatwH5uJjgpgbkKVMGb/BZCCGEEEIIfxq873pFn6txuDhWqo9bnzRIG5C3ZAkwkTYnDoADmzp+E3vjnGQA3t5xCrdH7Zez9YT3jXjEIO3/1FJUUjIzLr4CgLUv/RuP2zXAJ+rcjqId5NbkYjPZWJa6rN013iyoIVuGV93YgLxO723V6/5PjdMwY5XGDKionk1l+2/h1xSaTCS53DxdtYuiSj2w5S0z7dMMKE2DbG//p87L77wMQUGEXqr3cGqvGXnLBuQup6MpC3D2FdcSFhvXreN5G5BPDAqktsKJ0WwgaXxEt64hhBBCCCHEUCUBqGHsYIH+0/jEsACigq0DfBrfpC/QgzVHd5XgqGs/CHJBehwRNjOF1Q6+zu64sfBAa56AN/gDUABnX3sztrBwKgry2PXZRwN9nE55s58uHnUxNrOt3TXeANTGvI14+qMxtr/V6AHMhkr9w95mQHn7wQU19YCK7fY1TtWc4oWMFwD4TnkD6UoBrk3PAs2f55UFfZgBVXwQqk6CKQBGnePzw7xleNWrPsdTXd10u6Zp2HfoAajAmbPYvvI9akpLCImKYe6VbTPruuJtQD6iXs/MGjEhArPF2O3rCCGEEEIIMRRJAGoY877hnJQ0+MvvvGJTQohKCsbjUsne3v6kO6vJyDUz9Wbkb24bvGV4FY1vxMOHSADKarOx6Ja7APjmnTeorSgf2AN1oMpZxZc5XwLtl995TY+dTog5hApnBRllGf11PP/xZkCV1QO9y4DyqBoHCvTAi1JXCfSsB9QfdvyBBrWBsxLOotB6BwAJe/4CNYVNmX4VfRmAym4sv0tdBJb2A4/tCZgyRe/v5HRS9fHHTbe78vJxFxeDyYQrMZ7tH+oZUufe/u3uTQj0Hq9Yz4AyF+vTC1Nl+p0QQgghhBhGJAA1jHlLboZC/ycvRVGampFndtKM3FuG99WhYoprHP12vu7wvhEfrBPw2jPpnCXEjx2Hy1HPxjdeGujjtOvT45/i9DhJi0hjcvTkDteZDWbOTjwbGKJleI1T8BqKKgGwpPY8A+pYSS0Ol0qQWcFRWQF0vwfU5vzNfJX7FUbFyENzHyIn6Ur2qGMwe+yw+rGmz/OqkqK+K+HMaiy/62L63ekURSH8usZm5C3K8LzldwGT0vn67VdxuxpITp/CuLMWdPto9Q0ecsvtBKhgz9fLHFOmRHf7OkIIIYQQQgxVEoAaxrxNhycPgQl4LY2bG4/RZKDsVC0luTXtr4kLYebIcDyqxrs7+3jqVg+4XS6qS4uBodEDyksxGFhy9/0AZK7/ivysQwN8otY0TePdrHcBPfupq+li3jK8Dac29PnZ/K4mH7dTwVOjBzMsI0f2+FLeYPS0SAVNUzEYTQSFhfv8eJfq4qltTwFw84SbGRM+hhFRwTzqulNfsPd1gmqPYrYGoKkqVcXtZy/2Sn0FnNyq/zntwm4/POyKy1EsFpwHDlKfmQk0NyCvGjua7K2bURQDi+++v0dT646W6BPwJhksaBpEJgYREtn9LCohhBBCCCGGKglADVP1DZ6miUyTh1AJHkBAkJnRM/TsjAObCjpcd9Mc/Q35W9tzO8yUGihVRQWgaVgCbdi68UZ/MEgYO55J5y0FYM0Lz6Gpg6fR+4HyAxyuOIzFYOGy0Zd1uX5h0kIUFA6WH6TYXtwPJ/QTVz3UV+CqMQFgiovDYPO95Ox0GY3B6Ikhei+skOjobk1mfOPgGxyrOkZkQCQPTH8A0CdS7tXGsjZQDwYpq35GeLyevdgnZXhHvgLNAzETIKL72WDG8HBCLrgAaM6Cqt+1ExXYVaafd9qFlxAzMrVHx8tq7P80SdGbxqfK9DshhBBCCDHMSABqmDpUWI2qQXSwldiQodGAvKX0hXrWUPa2QlzO9htIXzo1gSCLkRNldrYeH1z9iprL7xJ7lE0x0BbdfCeWQBtFx7LJWL96oI/T5L0svfn4+SnnE2btOrAaFRjVVKY3pLKgvOV3dj3o1OsJeI394JItTqB7E/BK60t5dq/eaPyHM39IqEXPqEyOCATg9+6bwBoK+buJCHADfTQJr2n6Xfezn7yampF/9DGuwkKc2UfIjQ6joqKMgJBQ5t9wa4+vnVVUi6JBTK0esE2ZLOV3QgghhBBieJEA1DCVkd9cfjcUAyBJaeGExgTS4PCw49PjZG0vJO9wBaranOkUZDVxxXQ9UPXW9sHVjLx5Al7H/Z88qsY3R8v4cE8e3xwtw6P2cRaX6oHjG2D/O/rvnUyGCwqP4OzrbgZgw+sv4air7duz+cDusvPp8U+BzpuPn27RiEXAEOsDVaNn/jmderCnNxPwVFXjQOPrQbSiNzTvqv+TR/WwvXA7nx77lJ9v/Dm1rlomRU3iqrFXNa0ZGakHxw7WBuBe9L8ARFTtBqCy0M8ZUKoHsvXG893t/9SSbe5czMnJeGpr2fOTH5MTGcKhBD1TaeGNtxMYHNLja2cX1ZDgMWBwaVhtJuJHD63SZyGEEEIIIXrLNNAHEAMjM2/oNSBvSTEoxI8Kpbqknl2f5zbdHhRuZdGNaYyZoY+Qv3HOSN7YdpJP9xfwy8snEWYzD9SRW6lofAMe3kH/p1UZBTz20QEKqpobqCeEBfDo5eksm5zg/wMdWAmrHmzKrAEgNBGWPQXpV7T7kBnLLmP/V59Tnn+KLe++wXl33Ov/c3XDlzlfUuuqZUTwCObEz/H5ceeMOId/7PkH3xR8Q4OnAYvR0oen9JPGCXgueyBQ26sMqNxyOzVON1aTAYtDf13obALe6pzVPLntSYrsrfs4nT/yfAxK8880IoMs2CxG7A0ecsfexug9rxBRWQZE+z8DKm8n1JeDNQyS5/X4MorBQGnaKHYGG3C4ayBZfx1RNA3t6DG4oOdHzCquYbRL//sZmR6JwSg//xFCCCGEEMOL/A94mGqagDfEGpB7Hd1dTNa2to2M6yqdrHoug6O79X4+00aEMSE+BKdb5YM9g6cZufcNeGRC2wDUqowCHnh1V6vgE0BhlYMHXt3FqoyO+171yIGVsOKO1sEn0IMcK+7Q72+H0WRm8V33AbB71ceUncptd11/eS9bL7+7Ju2aVoGQrkyMnEh0YDT17np2FO3oq+P5V43+b+Ws1LPiejMBz/taMCEhlLryUqDjDKjVOatZvm55m+ATwN92/43VOc3lmIqikByhZ0HlVrlh2ZNEWPQMq4o8P3+uZH2u/z52CRh7HmTe+69/sKn0FA6zsdXtGvDVmk/Z+69/9Oi69gY3pyrqGePSryvT74QQQgghxHAkAahhqMGtcriwsSHuEMyAUlWNDW9ld7pm44psVFVDURRunJMMwBvbBk8z8srGHlDhpwWgPKrGYx/9f/beOz6u6k7/f9/pGo1GvXfZcpN7wTSDTTGGBAKBhBQSki2k/8iS3YRkC+G7WUoKS9qSTbJJSEghlFCDMcQYG2zcDZarbBWrd2k0I0299/fHnTtqM6OZ0UgunPfrlZdG9557zhlNce7D83k+Rwm3S+3Y/S8eTV45nhxQnU/RVtx8b8RyvIplK5mz+mLkQICtv/n5Wfv71g/Wc6DrADpJx4fmfiiua3WSjnXFahneeZMD5WhDUcDXp2Y2TccBpQWQLy6y4+jpBsJnQAXkAA/teQgl7HtF5eE9DxMY814pDZbhNfePwNyryVh0OQBD/QP43CMJ73kSdUEBqjrx8ruAz8tbW15Sf5lYlhz8/a0tLxHweeOe+3SXi9QA5Mk6kKCsJivhfQoEAoFAIBAIBOcrQoB6H3KycwhfQCE9xUhJMCj4fKK9bgDXgCfqGGe/h/a6AQBuWVGMyaDjeMcQh4Olh2cTr3sEZ78aip5ZMD4Dak9D3yTn01gUoH3QzZ5khao37ZzsfJq4oqNVHReB9Z/+B/RGI2cOH+LU3l3J2Vec/KXuLwBcUXwFeda8uK+/ouQK4DzKgXK04XfrkD1+0OkwlZQkPNWRkBsynaGgAJWWM/lveKDrQFjnk4aCQsdwBwe6DoSOlWap3y8tfcMApNz4ABa9GkQ+8M6fE97zOBxt0HEYkKA68Rq5088/h1uvmyw+aUgSbr2O088/F/fcJzuHqAq6nwoq7aTYzoMyT4FAIBAIBAKBIMkIAep9yJEx5XfnYwC5yxFdfJo4LsNqYlNNAQB/OgfCyAc61BK6lDQ7Fptt3LmuocjiUyLjpsQZWVCIdVxGfgGrP/hhALb99v/weWN7fZKFL+DjhdNqmeCHqz+c0ByXFF2CQWfgzNAZGgcbk7i7GWKoHd+QGuFnLC5GMiUmaCiKEuqANz/TiGfYBUBazuQSse7h7pjmHDsuVIIXFKCk7CoyslTXZf/f/gd8SXBBad3vildBauKlbc722ILRYx03FjX/KVh+J7rfCQQCgUAgEAjepwgB6n3IaMnN+Vd+B5BqN8c97mMXqWV4LxxqY9jrn5F9xUq0Dnh5aZaY5oh13JTY8pMybu3NH8GWlY2ju5N9Lz6bhI3FzraWbfS5+8hNyQ11tIuXVGMqq/JXAeeJC8rRjicoQE2nA17boJv+YR8GnUSBQRWDLLY0TJbJzsh0c2zfF7nW0fK9slAJ3nDoWOa8lQD09zth508S3nuIk0EBahrd7wBsYfLYpjNuLKfahyj3q//cli/Jjvt6gUAgEAgEAoHgQkAIUO9DtNDhmuLzU4AqrM4gNSO6CKXTS6TljIo0F1dmU55txenx8/J7SQ7xjpP+oIMiM8yN7EWVWRSmRxaXJNRueBdVJilDpvxStdsdkZxwEtiL1XFRMFosXHnH3wGw57mncfR0JWd/MfBM3TMAfGjuhzDoEm/seUVxsAyv9RwXoORA0AGlOmqml/+kfhfMy0/DPdALhA8g73P38dihx6LOJSFRYC1gZd7K0LFQBlTfqNMps6gMgH5vCuz4AQy2JLx//B6o36Y+rt6Y+DzAnA/djCUgQ6QcM0XBEpCZ86Gb4557sMmJCQmjzUhOiW3qCwQCgUAgEAgEggsQIUC9z/AHZI61j4YOn4/odBLrbq+OOkYOKDz73f10nxkKXfPR1aoL6smzXIYXzQGl10l8cf2cqNffd+Mi9LoklU7q9LDp4ehjNj2kjpuC+ZdeQfGCGvxeD28+8evk7G8K2p3t7GxV86lumXvLtObScqD2d+7H5XNNe28zhqsblAAep9rtbToOqCOto+W4Wv6TfYIAVT9Qzyde/gTv9ryLxaCKo9IEwVL7/RsXfQP9mPeKljE3OOJjcMQHjAqvA1I++Edgy78nvH8a3wKfC2wFULgs8XkAvdHE5Rs/GP5kUJS6fOMH0RvjK3d0efzY+1XXZdnirPOy7FkgEAgEAoFAIEgGQoB6n1Hf48Ltk0k16anITj3b20mYOSvy2PS5xZOcULZMM1d+fB6Zham4Br08+/39NLyr3ljftqoEvU5iX1M/p7qGzsa2AejvCHbAKwhfyrO9rgcAk2H8x1MCfvTxFWxaXJjcDS26CW79Zfhz676mno8BSZK46rOfQ5J0nNy1g+Yj7yVxk+F57tRzKChcVHARZfayac1VkV5BWVoZftnPrrazE6YeE8HQeJ9Lfe9PywHVFhSji9NDHfDSxnTAe6f9He746x20OlspsZXw5Aef5L/X//ekoPd8az6PrH+Ea8qvGXc81WwgJxi43RzMgdKE136/DSQdHHlWFZISQct/qr42cnh4HCy764tkhwlgt8gK11zzAZbd9cW456zrHGJOsPxu3vL4A/IFAoFAIBAIBIILhcTrVQTnJVrJTU1ROrpkuWjOEnNW5FG5LFftiufwkGo3U1idgU4nUb0mn1d/UUvzsX7++rPDXHbrXJZdXcqG+Xm8fqyTJ/c2868fWHRW9h2tBO/Nk928drQTg07ixS9fRp/LR6fDzX88fwSH20dW6gx1z7IH92LJhBu+B8dehGPPQ/fxuKbJq6hi6TWbePe1v7L1Nz/nUw/9EJ1+avdUIgTkAH85pXa/SzR8fCJXlFzBE8eeYHvL9kliyjmDow1FAa9D/fyaKhJ3QI39PujcN94B9Wzds/znrv/Er/hZkbeCH274IZmWTKrSq9hQuoEDXQfoHu4m15rLyryV45xPYynJtNLj9NLSP8zi4vSQ8DrsdOFZ8mnM7/0GXvkG3PUm6OP4J0lR4OSr6uNp5j9p+NxuBhwDAKzfeCPS8Ai2wiLmfOjmuJ1PGsfr+smQdcgSlCzITMo+BQKBQCAQCASC8xHhgHqfoQWQ1xSfn+V3E9HpJIrnZzJvTQHF8zNDoprZauQDX17GonVFoMDbT59i+x9PcvsqtV39Mwda8frlWd/viHMI95D6GmROcEB5/TL3v3gEgDsvrWB+gZ1L5mRz84pirqtRQ8C3Hp+hbKUzQcdP1RWw9COw/l7195ObYSjGTnlBLrv9Diy2NHrONPLu668keaOjvNP+Du2uduwme9LEIi3EfHvLdmRl9t8fMTHUjn9YjxIAjEaMRfGHYgN0Odx0DXnQSbCwMC3kgLJl5/DI/ke4b+d9+BU/N1TewC82/oJMy6h4otfpWVOwhhuqbmBNwZqI4hOM5kBpnfDMVivW9AwA+ud/CiwZ0FkL++Ms2+w9Bf0NoDNC1fr4ro3AmSPvEvD5sOfmsfLv7mLlV77KvNs+mrD4BNB6RM3W8mWbMFnEf/MRCAQCgUAgELx/EQLU+wwtgPx87YAXD3q9jvWfmM+lt84FCWq3tzL8t3aKU830uby8fiw+YSUZDATdT7asbIyW8WHjv93VSH23ixybibuvGZ9xddUCtXTnjRkToN5Rf5Zdov7MXwQla0D2w7t/jGuqlDQ7l93+KQB2PvkEw47BZO40hBY+/sGqD2LWx9YZcSpW568mxZBCr7uXY73HkjJn0nG0jXbAKy1FStBhdiRYfjcn14bVZGCoVxWgfnPmj/y6VhWDvrjsizy07qFp/X3LstQcqHFB5FoZ3oALrvo39eDW78BwX+wTa+6nisvAnJbw/sZSf2AvAJUr1iQtq8nbogpv9qrk7FEgEAgEAoFAIDhfEQLU+whZVjg6JvPl/YAkSay4tozrP7cEg0lHy7F+PjZkwi5L/OkshJGHAsgnuJ+6htw8+nodAF+/bgF2i3Hc+curczDqJep7XDT0JDkgW5bhzG71cdnFo8dXflr9eeC3kTuDRWDpNdeRW16J2+Vk55+fSNJGR+kd6eWN5jeA5JXfAZj0Ji4tUjv+bW85R7vhDbXjTWIHvMXF6chygKFeNXtsm+MdjDojD657kC8s/8K0hZjSzGAnvP7h0DGt/LS/rRVWfRbyF4N7QBWhYqUuKEBVJ6f8TlEU6g/uA6Bq5eqkzOkZ8WNzBACoXja5u6BAIBAIBAKBQPB+QghQ7yOa+oZxevyYDTrm5J6/AeSJULU8l1u+thJrugmdw88dQ2bqjvXQMuameDbQAsgndsD73uYTOD1+lpakc1uwTHAsaRYjayqygBkow+s+Bp5BMNkgf8no8ZoPq8f6TkPTzrim1On0XPWZzwHw7uub6Ww4ncwd81L9S/hlP4uzFzM/a35S59a64Z2zApSjFa/mgJpGBzzNDVlTZOdw434UWUaWFEz2NH658Zd8sCpCR7g4mViCB2McUO2tau7T9cFOjPt/De0xhNe7HaPvySTlP/WcacTZ24PBZKa0ZmlS5jz1Xjc6oFcns3RBTlLmFAgEAoFAIBAIzleEAPU+QnM8LCy0Y9C//176vHI7H7l3NdklNlIViduHzDz93MlZ3UN/m+qAyhgTQH6oeYCn9rcA8O2baiKGw89YGZ6W/1SyZnwItNkGi4PuogO/jXvakkWLmX/pFaAovPGb/0WJ00UVCUVRQuV3H56XPPeTxrpiNQeqtreWnpGepM8/bRztowLUtBxQqhtSSTnOt/56DwAeq8QfPvAHVuavnPY2NcqCAlRL/wiyrL4HNAfgQFCQpeJyVfBUZHjl61M77urfUMtDs+ZA9pyk7FMrvytbvBSjKTklnUf3q2W+7VaJzJlqICAQCAQCgUAgEJwnvP9UiPcxofynCySAPBFsmRY+/M8rsZSlYkTCuLuPfZsbkyaOTMVEB5QsK9z3gho8fuvKElaWRe6StSEoQO1u6MXp8SdvUxPzn8ay8k7159HnYGQg7qmv+ORnMZjNtB4/yvGdyXEUHeo+RMNgAymGFK6vuD4pc44l15rLwqyFALzV+lbS558WigKOtmk7oPpdXloHRjBm7uInR7+JfsgHQGXJAkrtpUnbLkBhugW9TsLrl+l2eoAxJXjtbaOfvY3/CYYUVRCtfSb6pCe3qD+T5H4CQuV3lSvWJGU+RVboPhnMPyu0RB8sEAgEAoFAIBC8DxAC1PuII0HHw/shgDwaJouBj39tFYetapez3c/V88YTxwnMcFc8RVHoD4aQaw6QZw608G7zADazgW9sil5KVpWTSnm2FV9A4a26JDpzQgLUxZPPFa+CvEXgd8Php+Ke2p6Ty9qbPwrA9id+hdc9MsUVU/PMSVWcuK7iOmwm27TnC8c5W4bncaB4XPhcwQyoyoqEpjnc2o85/0UsBc8jKzIXpS4DIDOvMFk7DWHQ6yhMVwUYrQwvvUBdxzPsYiTYFZL0Elj3NfXxln8HjzP8hLIMdUEBqnpjUvY4MuSg/eRxIHn5T11nhlDcATwo5M95f3/nCgQCgUAgEAgEIASo9w2KooxxQImbIavZQMH6Ql5P8aIAx95u58UfH8Lt8s3YmsODA/jcI0iSjvT8AhxuHw9vPgHA/3f1XPLs0V0SkiSxYX6Sy/AGmmGwGSQ9lIS58Zak8WHkCbD6g7eQnpePs6+XPc/FL2KNZcg7xJYmVXy4tfrWac0VDU2A2tW2C588c++JuHG043XqQZGQUlIw5OXFPcWwb5jvHboXU9bbANy98m4uTl0BqILhTKCV4TUHBSijyUxacC2tLBWAS78CGeUw1AZvPRJ+svZD4OpS88nKL0vK/hrfPYCiyOSUlmPPif9vGo6mw6pI3GiUqS4UHfAEAoFAIBAIBAIhQL1PaB0YYWDYh1EvUZ0/M66R843b15Ry0BzgOZsXg1lH64kBnvnufga7ZyaYXLvRtufmYjAa+fHf6uhxeqjKSeUzl1bGNEcoB+pEV3LKBpuD3e8Kl4EpQjD90ttBb4KO96DtUNxLGEwm1n/6HwHY9+KzDHS0J7hZeKXhFUb8I1SlV7Esd1nC80zF4pzFZFmycPqcHOw8OGPrxM1QG17naPldvB3qOlwd3Ln5ThpH9qHIBjbm/Av/sOQfGOrtBiAte2YEqFAnvL5RB5zmAtTKUgEwWuC6B9THO38MffWTJ9PcT1XrwZCcXCUt/6lyZXLK7wCaanvVuQ0BqvOEACUQCAQCgUAgEAgB6n2CFjg8Lz8Ns0F/lndzbrCw0M6y0gxOGQJwVT62TDMDncM8/dB+2k4NJH29sflPp7qc/PrtRgD+48ZFmAyxfRTXVmVhNenpGvJwpM0x/U1pAeTh8p80rFmw8Eb1cYIuqDmr11K+dAUBv59tv/tlQnMAPFv3LKC6n+IVX+JBJ+m4vPhy4BwrwxsbQB5n/tOR3iN88uVPcrzvOJKcxnDTXdw8T83QGupRBaiZckCVZqUAUTrhjWXBB6BqAwS88Oq/Tp7s5KvqzyTlP8lygMZ3DwBQtSI55XeuQQ9dTUMANBgDzBOiv0AgEAgEAoFAIASo9wtHtPK793n+00Q+tkYNXH7yVCe3fmMVuWVpuF0+nn/0ICf3dCR1Le1GO6OgiPtfPIJfVrhmYR7r58de8mM26LlsrtrOfWsyyvCi5T+NRSvDO/wUeON3iEmSxIY770Kn13N6324aDu2Pe47jfcc50nsEg87AjXNujPv6eFlXonbD2956LglQbQl1wNt6Ziuf3fxZuka6qLTPYaj+C8juMmqC3weaAJU2YwJU0AHVP1aACnbCa28bP1iS4PqHQWeAE3+FutdHzzm7oE0Vi5KV/9R+8gRu5xCWVBtF8xYmZU7N/dSul7Gmm8mwig54AoFAIBAIBAKBEKDeJ9S2ig544bhxWRFWk576bhfHBoa55WsrqVqei+xXeO1XR9nzUkPSOuRpAeRdkp0ddT2Y9Dr+7QOL4p5HK8ObtgA1MgCdage+KQWoiivUbB6PA44+n9By2SWlrNikCkdvPP4LAv74spU099PVZVeTaYncLTBZXFp0KXpJT8NgA81DzTO+XkwMxdcBT1EUHj/yOF9946uM+Ee4tOhS/qnmhyi+LIozUshKNeEdGcbtUgO/Z6wELyhAtcTigALInQ8XfU59vPle8HvVx3WvqT8Ll0FaQVL2Vn9QLb8rX7YSnT457tCx5XfC/SQQCAQCgUAgEKgIAeoCJyAr7Drdy76mfgAWFAoBaiw2s4EPLlU7cv1pTzNGs55Ndy1mxbVlAOx9qYHXf32UgE/tkCfLCq0n+jm5t4PWE/3IcuzilHaj/cwpNwD/sK6SipwIuUtR0ILI320ZoDfY1j4hWvYCCmTNAdsULiydDlZ+Sn2cYBkewCW3fRxregb9bS0cePl5mo+8x7G336T5yHvIciDidW6/m5fqXwLgw9UfTmhtJRDAtXsPgy+9jGv3HpRA5PUA7CY7K/LUcO5zpgzP0Y53KNgBb4wDKiAH2Nuxl7/W/5W9HXsJyAF8so//fOc/+f6+76Og8NF5H+WnV/+U+i71vVxTpH4XDPWqYdnm1FTMVuuMbFvLgGp3uPH41b97hpYB1dmOIofpQLn+G5CaC711sPsxaNgB+/5PPTf32qTtrSGY/1SVpPyngF+m+VgfAPVGkf8kEAgEAoFAIBBoGM7m4tu3b+d73/se+/fvp729nb/85S/cfPPNofOKonDffffxi1/8goGBAS677DIee+wxqqurz96mzyM217Zz/4tHaR90h4595Q8H+PZNNWxanPx26+crt68p48/7Wnj5cBv33bQIu8XIpbfOJT0vhTf/eJKTezoZ6nOz8LJCdj/fgGtgVPRJzTCz7vZq5qyILuAossxApxq+fdKdQn62mS9tmJvQfgvSLSwqtHO03cG2E93cuqokoXliyn8ay/JPwhsPwJmd0FMHOfF/Ds3WVNZ9/E5e/dkP2f6H34w7Z8vK4arP3EX12ksnXff6mdcZ8g5RlFrExYVTuLXC4Niyhc4HHsTfMVpWaSgoIP9b38S+MXIp1xUlV7Cvcx87WnbwyYWfjHvdZCP3teAf1krwVAfU602v89Ceh+gc7gyNy0vJI9OSyYn+E0hI/PPqf+ZTiz6FJEkcaR3fDdOh5T/NkPsJIMdmIsWoZ8QXoG3ATWVOKul5+Ug6HX6PB2d/H2nZOeMvsqTD1ffBC1+G1+4Dxoi9Bx5XXVCLbprWvhw93XSfaUSSdFQsWzmtuTTaTg3gcwfwGiU69Arz8oUAJRAIBAKBQCAQwFl2QLlcLpYtW8ZPf/rTsOe/+93v8qMf/Yif/exn7N69m9TUVK677jrcbnfY8YJRNte284UnDowTnwA6HR6+8MQBNtcm3onsQmNlWQbVeTbcPpkXDo3m0dSsK+bGryzDlGKg/dQgWx8/Pk58AnANeNj8v7WcPhi9HG6ot4eAz0cAHUMGG9+6YSGp5sT131AZ3olplOHFmv+kYS8azd2ZhgvKlJIS9rizr4cXHnmAut07J53Tyu9uqb4FnRTf15ZjyxZa7/7qOPEJwN/ZSevdX8WxZUvEa68ouQKAvR17GfbNTHfEePC2qs9BZ0tFn5nJ602vc8+2e8aJTwBdI12c6D+BSWfi0Q2P8umaT4dC22vbxpfjznT+E6gZYFoQeXOwDE9vMJCelw+MlqdOwqw5Nic4DV098OdPw9EXprWvhmD5XWH1fKz25OTjNR1Wy++aTTJIiBI8gUAgEAgEAoEgyFkVoK6//nq+853vcMstt0w6pygKjz76KP/2b//Ghz70IZYuXcpvf/tb2traeO6552Z/s+cRAVnh/hePTrxlA0Zv4+5/8SiBOMrHLmQkSeJ2LYx87/isn9KFWdzytZVMpXm89ee6qOV42g32oNHOqopsblpWNK09bwgKUNtPduMLhClfmgq/B1qDQeCxOqBgNIz83T+O5vLEgSwHeOPx6F3w3nj85+PK8ZocTezt2ItO0nHz3JvjWk8JBOh84EEIl+MVPNb5wIMRy/Gq0qsothXjlb3sbt8d19pJx+/F26V2VjOVlyErMg/teQgl7CddJc2UxpUlV4Z+H/EGONWl5j1pDQkcIQEq9jD8RNDK8GLqhAcgB+DVeyPMFnzOm+9VxyVIfZLL72A0/6lWUT8fogRPIBAIBAKBQCBQOasleNFoaGigo6ODa665JnQsPT2dtWvXsmvXLj72sY+Fvc7j8eDxjLpUHA61Vb3P58Pniy/0+Hxld0PfJOfTWBSgfdDNrlNdrK3Mmr2NncPcuCSfhzcf53DrIIeaekP5OAAuxwjKFBqPs99D8/Eeiqozwp7f/95xAAaN6fzbDfPx+/3T2m9NQSqZViP9wz52n+6O+3WUWvZj8LtRrDn47WUQ62ejYgOG1DwkVxf+Yy+jLPhgXOu2HK3F2dcTdcxQbw9Nh9+jZNFiAJ458QwAlxZeSrYpO67P8fDevZOcT+NQFPwdHTh278a6JrwIcVnhZfy57s9sa97G5YWXx7x20hlswetUv7INFZXsadszyfk0kV53L3va9rA6fzUAh1sGkBXItZnITNHj8/kY7FbnSM3MmtHvyOIMCwBNPc7QOul5apB4b1vLpLWlprcwOCI4owBQwNGKv347Snn8r4vf6+FM7bsAlC5ZnpTnPtg9wkDnMJIOGo0yeWlmrEbeN//2CAQCgWB2Ef++CASC841zVoDqCN405ufnjzuen58fOheOBx98kPvvv3/S8S1btmCdoYDdc439PRIwdTenLTt203tMuKA0FmfoONir4wfP7uS2qlHFabjNAIQvGxvLzjf3YK2bLCzJCmx5+12qgZT0dJoOvUXToenvd45Vx75hHb/avIfe8vhcUHM7X6YGaDeWs/eVV+K6dqHtIua5XqL3tUd4pz4+E+VQ46mYxr29bStpjWcIKAGecjwFQNlAGX/961/jWi/t0CFiSTvb/9prDHV3hz1n8anCyeunX2dF94pQKdtsk+U8yRyH+rlu9Hh5Y9drMV332q7X6DKppZo7OtTvhlyDO/S3bDl5AoDTzS10xfn3jYeh4Np7j9Xz14D6PhjsVZsjnHj3IEMZ4x1YxX27WB3DvId2vErrEUfc+3G1NeP3ejFYU9lTexTpyLG455jIUKMRsDBi9eOVIEM3Evd7ViAQCASCWBkePvvxAAKBQBAP56wAlSjf/OY3ueeee0K/OxwOSktL2bhxI3b7+6MDXHZDH7+t2zfluI3r1goH1Bjs83r57OP7OTRo4n+uvRKLUb3Zb6sb4KV3D095/aVXXhTWAfWHPc0YR14F4KarLuLi629Iyn7l99rZ99RhzvjSuOGGy+K6Vv/nPwCQv+ZD3LA2zv30zYfHXiLPcZgbLl8G9uKYL205WsuzO9+Yctxl66+iZNFitrVsw7ndSZYli7tvuhujzhjXVodzc2n745+mHLfq2msjOqCu8l/Fn5/5M46Ag+pLq5mXOS+uPSQL6aiXlqADqubaazCsyuOpvz015XXXXnJtyAH11nNHoKGV9cvmcsM1agj+b157ATew7pprKZq3cMb2bzrWxV8aD+E3Z3DDDWru2JnSIp7b9zZmJcANN4x/H0pNdmh6bMp5l6+7jmUJOKC2Pf5z2oEFay/jqg98IO7rw/HyTw8zyACBkgzo6OaSRRXccMOCpMwtEAgEAsFEtEoPgUAgOF84ZwWoggK1NKOzs5PCwlEPQ2dnJ8uXL494ndlsxmw2TzpuNBoxGuO7eT1fuWRuHoXpFjoG3WHTYSTUTmqXzM1Drzs7bo5zkSvn51OckULrwAivn+jhlhVqd7nSBTmkZpgnBZCPxZZppnRBDroJf89+l5f//tspPuhTg5/Lq6qS9j68amEhel0tp7pddAz5KM2K0eEny9CyBwB9xeXo491P/gKoWIfUuAPj4Sdh/TdivrR8yVJsWTlRy/DSsnMoX7IUnU7P8/XPA/ChuR/Cao7fwWhfu5auggL8nZ3hc6AkCUN+Pva1a5H04V2DRqORtYVrebPlTXZ27KQmrybufSSF4S68Q+pXdkrVHC4qWki+NT9iGZ6ERL41n4uKLkKvU5/b0XY1Q2ppaSZGoxFZDuDsUzOLMvMLZ/Q7sjKYhdQyMBJaJ7dU7eQ32NmJXqdDN/Y1qLpCDb53tDMphBwACexFGKquAN3Ujs+xKIpC46EDAMxZvTYpz9vr9tN+Sv2c1xnUXKoFhenvm393BAKBQDD7iH9jBALB+cZZDSGPRmVlJQUFBfztb38LHXM4HOzevZtLLokjNPl9iF4ncd+Ni8Ke0+SR+25cJMSnCeh0o2Hkf9rTPO74uturo157+UerJ4lPAI+8dhKHy026X/0vVJmF0wsfH0u61ciqskwA3oinG15vHYz0gSEFCpcmtrgWRn7wd3GFQOt0eq76zF1Rx2y48y50Oj0drg52tO4A4MNzP5zQNiW9nvxvfTOi+ASQ/61vRhSfNLRueNtbtie0j2QQ6Goi4Fb3aaooR6/Tc+9F4UO6peAn/RsXfSMkPnn8AU52qgKU1gFveGAAOeBH0umwZc6sG1ILIR8Y9uFwq5kVadk56I1G5IA/FIYeQqeHTQ+HntF4gr9veihu8Qmgr7UZR3cneqOR8sXL4r4+HC3H+5H9CvYcC4cH1ZII0QFPIBAIBAKBQCAY5awKUE6nk0OHDnHo0CFADR4/dOgQZ86cQZIkvvrVr/Kd73yHF154gcOHD/PpT3+aoqIibr755rO57fOCTYsLeeyOlViM41/ignQLj92xkk2LY0nGef9x26oSdJIa5F7f7Qwdn7Mij02fW0xqxnh3XWqGmU2fW8ycFZM7iB1tc/D73U2k+YfQoWAwm5N+k691w9t6PA4B6swu9WfJatAn+F/OFt4IlnQYbIb6bXFdWr32Um6651vYsnLGHU/LzuGme75F9dpLAXj+1PPIisyq/FVUpFcktk/AvnEjadddN+m4IT+f4h8+in3jxinnWFe8DoD3et5jwD2Q8F6mg7ehAQC9PQV9muomshrCu8Lyrfk8sv4RrikfbeJQ1+nEF1DIsBopzlAzzTTRx5aVPd59NAOkmg1kp5oAaA52wpN0OjLy1e+isJ3wFt0EH/0t2Cd8X9mL1OOLbkpoL1r3u9JFSzBaLAnNMZGmw6qrr3BhFh1DahOIuaIDnkAgEAgEAoFAEOKsluDt27ePDRs2hH7XspvuvPNOfvOb3/D1r38dl8vFXXfdxcDAAJdffjmbN2/GkqQbhgudTYsLyfvrMc70jfDF9XNYV53LRZVZwvkUhaKMFK6cl8sbJ7r5874W7r1+NL9lzoo8Kpfl0nayn7/+7DA+d4CrP72A0kXZk+ZRFIVvv3gEWYFri3XQopY4Sbrkar5XLcjj4c3H2XW6lxFvgBRTDCLCmXfUn2XTcBIaU2Dp7bDn53DgtzD36rgur157KXPWrOXM4Xd59sH7UBSFj377ITKCXdFkReYvp/4CwK3Vtya+zyC+lhYAUq/agGvrG+jS0pjz+mvoDLF9BRbaCqnOrKauv4632t7ig1Xxdf9LBt5WtfmCqUgVHX2yj4f2PgTAJxZ8gmvKr6F7uJtcay4r81aGnE8ata1qedjiovRQkPpQrypA2XNyZ+U5lGRZ6XV5ae4boaYoHVBdgb0tZ+hvb6Ny+arJFy26CRZ8AJp2grMTbPlQfmlCzieN+oOqAFW5InzuV7woikJTrVrKKBWlwGEosFtITxGlEQKBQCAQCAQCgcZZdUCtX78eRVEm/e83v/kNAJIk8f/+3/+jo6MDt9vN66+/zrx5ZycA+HxkcMTHmb4RAP5xXRWXzMkW4lMM3L6mDICn97fgC4zvLqfTSZQsyKJquXrD3nS0L+wcL73Xzp6GPixGHTeUqTehmYWxh3XHyrx8G8UZKXj8MjtPR85VGofmgCq7eHqLa2V4x18GV4xrj0Gn01OxbCU5ZRUAdDc1hM7tbt9Nq7OVNGPaOBdPIvi6unAfOQJA4b/+K+j1yENDBHri2/MVxWe3DM/brr7XTOVqmegfj/2RhsEGsixZfGnFl1hTsIYbqm5gTcGaSeITwOGgAFVTPNqMQXNApWXPjgBVmqk6rzQHFIx+LsI6oDR0eqhcB0tuU39OQ3xyu5y0Hj8KQNXK5AhQPc1OXINeDCYdXWa13LNalN8JBAKBQCAQCATjOGczoATT52ibmjtUnJFCZrD0RTA1Vy/MI8dmosfpiVjaVr5YdT01He6ddG7Y6+eBv6ot3b+4fi7ygDpHRhLznzQkSWLDAlU8iKkMz9EO/Y0g6aBkmjffBUugaAXIPnh36k5zkcirnANAV8Pp0LFn654F4IaqG0gxpExrm64dao6UZfFijMXFmOeq3d/cR4/GNY+WA/V269v4Zf+09hQ3ioK3RxVtTFXV9Iz08Ni7aoe4u1fejd00dYfP2uD3weKg8whgqGd2HVBlwaD85v5RASqjQP1cDHS0zcoemt47iCLLZBWVkJFfkJw5a1Uxs2RBFnW96nOrFuV3AoFAIBAIBALBOIQAdQFzpC1YclM89c2pYBSjXsetq9QOeE/ubQ47pmxRFpJOYqBzmMHu4XHnHtt2mvZBNyWZKdx1RRX9wRvrmXBAgVqGB/DG8S6UcGHbY2kOlt/lLwZLEt4XmgvqwG/DB33HQP4EAarf3c/fzqjNB5JRfufc9iYAtiuvBMCySA3odx+JT4BamrsUu8mOw+vgve73pr2vuBjuxetQv65N8xbzowM/wulzUpNdw81zb57ycl9A5lh7UIAqHhWgQg6onMkZZjOB1qlxrAMqKxYHVBLR8p8qk+R+AmgMCtEVS7Kp61KD3kUAuUAgEAgEAoFAMB4hQF3AjM18EcTH7avVMqdtJ7poHxyZdN5sNVI4R/27No5xQZ3pHeZ/t9cD8G8fWITFqA/dWGcWJN8BBXBJVQ5mg462QTcngl3OIpKM/KexLL4NjFboOQHNexKaIq9SdSR1BgWol+pfwif7WJi1kIXZC6e1PcXrxbVzJwC29RMEqDgdUAadgcuKLwNmvwxPGWzFO6TmVTVlKqF8rHsvuhedNPXX+OluJ16/jM1soDxrNLh8th1QWie8M2MEKM0Z6Ojuxu/zzej6iizTcGg/AFVJyn8aGfLS2aiKe+WLs0OdBqvzhQNKIBAIBAKBQCAYixCgLmBCJTfFQoCKl6pcGxdVZiEr8PS+lrBjypcEy/BqRwWo77x8FK9f5vK5OVxXk4/P62GoVy3PySyaGQdUiknPpXPUvUxZhpes/CcNix1qblEfH/htQlPklVeCJOHq72OorzdUfpcM99Pw/v3ILhf6nBwsNTXqlmsSE6BgtAxve+vsClCBtlPIPvXr+vvtTwBw05ybWJ63PKbra1vV74JFRXZ0Y3LgHL2aA2p2S/Ba+kdCbr3UjEyMlhQURWaws2NG1+84XceIYxBTipXiBYuSMueZI72gQHaJjYBFT6fDA4gMKIFAIBAIBAKBYCJCgLpAGfb6Od3tBMaHDgti52NrVBfUk/uakeXJ5WUVi3MAaD3Zj9ftZ/vJbrYc7USvk7jvxkVIksRgRzsoCmZrKilpM/c6jC3Di4hnCDoOq4+TJUDBaBnekWfB7Yj7cqPFQlaRWvK4572/cWrgFBa9heurrp/21kLld+vWhToQWubPB0nC39mJP84g8suLLkcn6ajrr6Pd2T7t/cWKt04Vy3x2PQcctVgNVr668qsxXx/ODelzu3EPqa/XbDmgCjMs6CTw+GW6h1ShRpIkMoMuqP4ZzoHSut9VLF2BPsYOiFPRGBSgKxZnUxd0PxWmW7BbRAc8gUAgEAgEAoFgLEKAukA51u5AUSAvzUxemuVsb+e85PrFhaRZDLT0j7Dz9OSw8cxCK2nZFmS/QtPRPu5/Ue20duclFaHym9H8pyIkaeY6EG4IClD7m/oZGPaGH9SyFxQZMsrBnsRywNK1kDMPfMNQ+0xCU2g5UO8ceh2AjRUbYwrWngrnm+PznwB0qamYKisBcB87Ftd8GZYMluYsBWBH645p7y9WvA1qh8DTmaoQ+vllnyfXGrtoFC4PTnM/mVKsmK2pydpqVIx6HYXpaqj82DI8rTx1pnOgkp3/JAdkmoOdMMuX5HCyUxX9RfmdQCAQCAQCgUAwGSFAXaBoJTei/C5xUkx6bl6uls39ae+ZSeclSaIi2A3v9a2NnO52kZ1q4u5rqkNj+ttVASpjhvKfNEoyrczLtyEr8ObJ7vCDkp3/pCFJ48PIE0DrhNfToOZnfbj6w9PelrepCW9jIxgMpF526bhziQaRw5gyvFnMgfK2qO+jM1kKFfYK7lh4R8zXyrLCkTDluLOd/6QRrhOeVp460D5zDihnf18o6L5y+aqkzNlRP4hn2I8l1Uh+pX00gDxPlN8JBAKBQCAQCAQTEQLUBcpoyY0ov5sOtwfL8LYc6aTPNdlZVL5ELcNz1A+BAl/fNJ/0lNHSG02AmqkOeGPZMFUZXrLzn8ay7OOgM0LbgdEyvzjQHFAZgwYq7BWszFs57S1p7ifrqlXo08Y7UhINIodRAWp3+27cfvc0dxkb/W1qqWB7lsTX13wdoz728q6GXhfD3gAWo46qnFGn02gHvNkVoEqzVAdUc99ouP9sOKAaDu4DoGBONakZmUmZU2tAUFaThU4nURdyQAkBSiAQCAQCgUAgmIgQoC5QtADyGuGAmhaLi9NZXGzHG5D5y8HJN8fF8zKQdWCTJS7LSeMjq0rHnQ91wCucWQcUwFXzVQHqzZPdBCZmVgV80KLegCfdAQWQmgMLPqA+PvC7uC/PragCwDZi4ObiDySlXDGU/zSm/E5jOgLUvMx55FvzcQfc7O3YO71NxoCiKHQEy9WyS8tZV7Iurus1MXphoR2DfvQrf6j37DigwnXC0wTamcyACpXfJan7HYw2INAaEogOeAKBQCAQCAQCQWSEAHUB4vYFQmG4ogRv+nxsTRkAT+49E+rcpVHbOUS9LgDA7cW54zqMAQx0zJ4DalV5JnaLgf5hH4ea+8efbH9PzWhKyVTzmmYCrQzvvT+BbyT62Amc8bbhsPoAWKNbOO2tyC4Xw3tVwcG2PpwApa7ha2khMDgY19ySJIVEoNkow3uzeRv2fvV995HLPh339aHyu6Lx3wVaCV5a9iyX4GUHS/DGCFAZQYHW2deLz518V5nf56Pp8CEAqpKU/+ToHaGvzYUkQdmibAaHfXQFg9WrRQmeQCAQCAQCgUAwCSFAXYCc7BzCLytkWo0UpYsA8uly0/IiLEYdJzudHGweCB2XZYVvv3CEeqMqQPlaXOOu8wwP4xpQhaDZcEAZ9DqumKeKCVsnluFp5XelF4Nuhj72VRsgvQzcg3Dspbgu/UvdX+i1qyWO7tYIGVZx4Nq1C8Xnw1haGgocH4vebsdYqrrV4g0iB7iiWC3D29G6Y5IomUw8AQ+P/e2/sPhAlhTKl18b9xyhctwJ3TAdZykDqiTogGrpHxUpU2xpWIJdImfCBdV67Ag+9wjW9IxQued0aQqW3xXMSceSauRkMP+pKN1CmuiAJxAIBAKBQCAQTEIIUBcgYwPIZ7Lz2vsFu8XIB5aoAtKTe5pDx5892Mqh5gE61PtpOhocjDhHc6I095M1PWPWuoxdFcyB2np8gogzk/lPGjodrAiGYx94PObLPAEPL9a/SF+6+rfTgqKnw9jud5E+A9MJIl9buBaTzkSrs5X6wfrENzoFvzv6O2huB8Bkk5FsWXFdryhKSICqieSAOksZUG2DI3j9cuh4ZkEhMJqblkzqD2rld6uRkiTAhsrvFovyO4FAIBAIBAKBIBaEAHUBUtsW/obzQkT2e2l+/fcc++N3aX7998j+yUHhyeBjF6lumZcONfPWU6/y6o8e5+lfPo9Okfm7jdVkF6eCAmeO9IWu0fKfZroD3liunJeLJMGxdgftg0GHiaLMXAe8iaz4JCBB4w7ojS4kBeQAezv28oN9P2DQM4icq4p0XY3TE6AURcH5ploaFy7/SWM6OVBWo5U1BWop10yV4XW4Ovj5ez+nMFhNac40qh0H46ClfwSH249RLzFvjDCiyPKYDKi8pO05FnJtZixGHYoCbQNjgsiDZaoDYRxQsqzQeqKfk3s7aD3Rjzwx42wKGoICVLLK73zeAC0n1BemItiIQAsgnycCyAUCgUAgEAgEgrAYzvYGBMnnSISSmwuNumd+yNbnXsHpHX0b2x7/HVfdfD3Vt96d1LVWl2dyQ/8xPrb7abKfHiQbuA/oTknHP+efSFm8mt5WF02He5i/tgAYLSWajfI7jWybmeWlGRw8M8Abx7v5xNoyVQga7gG9GYqWz+wG0ktg7jVw6jU4+ARcc1/YYa83vc5Dex6ic7gzdKzNNgRk09/ehmd4GLPVmtAWPMeO4e/qQkpJwXpRZMFhOgIUwLqSdbzd9jbbW7bz2cWfTWiOaPz3/v9mxD/CsiEb4MCUF7+zRnM/zS9Iw2QY/e8Nw45BAn4/kqQjNTM+V9V0kSSJ0kwrdV1OmvuHqQh25ovUCe/0wS52PFmHa8ATOpaaYWbd7dXMWTG1eNbf3kp/exs6vYHyJSuS8hxaT/QT8MnYMs1kFan7r+sSDiiBQCAQCAQCgSAawgF1geELyBzrCAaQX8AOqLpnfsgLf96C06sfd9zp1fPCn7dQ98wPk7re9v/7M19+8//IcY8PrM4eGaTgkW/T33gIgDNH+5ADalmRVkqUOYsOKBjthhfKgdLK74pXgcE88xvQwsgP/R4C/kmnX296nXu23TNOfALo1zlxWtTx3Y2Jl7Vp5Xepl1yCzhz5+WpB5N7GRgJOV8RxkbiiRM2BOth1EIfXkcBOI3Og8wB/bfgrEhJrHarAYSqMv1ROc0NO/C5w9KjvjdSsLPSG2f/vEKVZYTrhFQU74Y0pwTt9sIvN/1s7TnwCcA142Py/tZw+OCHrLAz1B9TujyULFyUsak5Ey38qX5ITKvE8GXJACQFKIBAIBAKBQCAIhxCgLjBOdTnx+mXSzAbKspJzs3WuIfu9bH3uleBvE0uS1N/feO6VpJXj+X1+DP/zaNjVdIACpP3uEcxWA55hPx31qhgxoAlQRTPfAW8sG4I5UG+f6sHtC4wpv5vB/KexzNsEqbng7IS6LeNOBeQAD+15CIXwJVRaDlR7fV3Cyzu3jeY/RcOQnY2hoAAUBc+J43GvU5pWSmV6JQElwM62nQntNRwBOcCDex4E4NZ5t2IOZguZyuJ/H2l5cDXF4fOf7LPcAU9D+25q7hstwcuY4ICSZYUdT0Z/H7z157opy/FG85+SU36nKAqNtT0AVCxR858Ghr10BzvgzRUd8AQCgUAgEAgEgrAIAeoCQyu5WVRkR6e7MAPIW7c9FSy7i/T8JIa8Blq3PZWU9Q6+9AZZwwMRV9MBOcN92ILiSVPw5lS7kZ5tB1RNkZ18u5kRX4DdDX1jAshnOP9Jw2CCZR9XHx/47bhTB7oOTHI+jUXrhHf8+N6Elvb39THy3nsA2K68Ysrx0wkihzHd8Fp2JHR9OJ6pe4bjfcdJM6Xx5aVfxNejurNMVXPjmmdsAPniovAd8GY7gFyjJFMNIm/uH+OACpaqjgw5cDudtNcNTHI+TcTZ76G9biDiee/IMC1Ha4Hk5T/1tblw9nnQG3UUz88ERt1PxRkp2Myisl0gEAgEAoFAIAiHEKAuMI60jXbAu1BxdrdOPSiOcVMx1NYR0zizYQCAxsO96k20S70pzQh295otJEkKdcPbc/g49J0GJChNzg14TGhleHWvgmO0pKp7uDvCBSqaADV4piWhZV07doCiYF6wAGNBwZTjp5sDpZXhvdX6FrIiTzF6agY9g/z44I8B+NLyL5HW70EJKEg6BWP5vLjm6nR46HV50eskFhaOF6BCDqizJECVhhxQowKUyZISyqPq72jF5YguPmlEG9d0+BBywE9GfmEo5Hy6aN3vSuZnYjSpJcCjHfCE+0kgEAgEAoFAIIiEEKAuMGrfBwHkttzYbiRjHTcVaUVTCxkABXPTkSTVIdF6okHdQ3YORrMlKfuIhw3BHKjBE0FnTt4iSMmcvQ3kVEPZpaDIcOgPocO51uiCR2/QRebp6sfncce9rJb/NFX5ncZ0BagV+SuwGW30ufuo7alNaI6x/PTQTxnwDDA3Yy63z78db2MTAEabHykzvvez9l0wN9eGxTg+K+1sO6DKwghQMOqCGmhvI9UeW15ZtHFa/lPlytWhrKbp0nhYdTiWL84OHasLClAi/0kgEAgEAoFAIIiMEKAuIAKywtH2oAPqAg4gL17/EWwmP0TIEQKFNJOf4vUfScp6Kz64gYEUe5TVwGG2sebDGyioUv/up/er2TVZs9gBbyyXzc3BpNdRMayWo81a/tNYNBfUwd+BrLqDVuatJN+aH/ESt1nGY1ZAUehuaoxrOcXvx/nW20AcAlSNKkB5Tp9GdscveBl1Ri4pUksbt7dsj/v6sZzsP8mTJ54E4N6L7sWgM+CtPw2AKc0PafG9l7QA8powYvRQ77nhgOof9jHk9oWOa+Wqfe1tFFZnkJoRXYQymPXkV4UX2xVFoeGQKkBVJSn/ye3yhTLeypeMClBaCV61yH8SCAQCgUAgEAgiIgSoC4iGHhfD3gAWo46q3Av3RkhnMHHVGk3EmCgLqb9vuPl6dAZTUtYzGA1YysuRIqwmAWleF0N/eTZ0U9pW1wiMBivPNqlmA2urslitO6EemK38p7Es+hCY7dDfCI2qE0uv03PbvNvCDpeQQIKcikoAuhpOx7XcyMGDyA4H+owMUpYtjekaQ14e+uxsCATwnDwZ13oaWhnedAQoRVF4aM9DyIrMteXXsrZwLQDe02o4uilNBlteXHNqAeThxOiQA+oshZDbzAYyrUZgfBC5ViY30NGGTiex6PLonx+/J8BfHzuMZ2Ryt8WuhtO4+vswmi2ULFqSlH03H+1DkRWyilKxZ6eEjtd1CQeUQCAQCAQCgUAwFUKAuoA4EnQ8LCq0o79AA8gBGOqk2vk3rik4xcQgcr2kcNNHN1J9691JW254/34sxw+rTifL+BvMfmsGI4uWIikKHf9xH7a9LwHg6GoHSFruTCJsrE5jsdSo/nI2HFAmKywJutCCYeR+2c+WJrUzXoohZdzwfGs+j6x/hEWLVPGlM04BSiu/S123Dkmvn2K0iiRJ0y7Du7z4cgCO9R2bMuMqEluatrC3Yy8WvYV/Xv3PoeMhB1ReKuhie04a2vfBxDw4n9fDiEM9Z8+JT9RKJqEyvDFB5BmFo53w5IDM6QNdABhM4/+psmWaWbGxDINJR/PRPp793n4cPSPjxmjd78qWLMdgNCZlz1r3u7Hld30uLz1OtXRUdMATCAQCgUAgEAgiI9r1XECM5j9duOV3APzt/4F3CGveAuiAdLuFFZYjbOuaQ0DRkX/Fx5O2lBII0PGd/wIg86MfZd6//zsHX3qDobYO0ooKWPvBDegNenr+53/o+fFPCPz+p1jWf49Bf596zVkqwQPYaG/GIMm0KdnYLAWclVSwlZ+Gff8Hx16A4T6eOvMqdf11pJvTef6m56l31NM93E2uNZeVeSvR6/TUdewE4ndAxZv/pGFZtAjXjh0Jd8LLSclhcfZiantr2dG6gw9Xfziu60f8I3x/3/cB+Lslf0eRbfQ9421Wg/RNBdlhr41Ej9ND+6BaUrioaGIAuSqiGC0pmFNT45o3mZRkWXm3ZXBcDlRWULDtb2/j8Jut9LW5MKca+MR9F9Pf7sLl8JBqN1NYnYFOJzF3VR4v/8979LW5ePrhfdzwxaUUVKrffw3B/KeqlauTsl9ZVjhTq36uK5ZMzn8qyUwhVXTAEwgEAoFAIBAIIiIcUBcQ0UpuLhha9sOhJwDoyt8IQEnNMlZlt1GWqgpwtdteS9pyA089jefYMXR2O7lfvRuD0cCaW67lqi99ijW3XIvBaECSJHK/9CWKvvc9dEYjmW37UAIDwNl1QOUPHAJgrzyft+p6zs4mipZDwVIIeOk/8Dg/OfgTAL6y/CtkW7NZU7CGG6puYE3BGvRBh09e5RwAepqb8Pt8kWYeh6+1FU/dKdDpsF1+WVxbnK4DCqZXhver2l/R4eqgKLWIz9Z8NnRc8XrxdaqCh6ksvveR1g2zKicV2wRRZGwHvGQFcydCaebkIPL0vAKQJLwjw+x+Xg11v/imKqx2E8XzM5m3poDi+Znogg7PvHI7H7l3NdklNkaGfDz3yEFO7e9i2DFI+2m1pLJyRXIEqK5GB26XD7PVEMp6AzjZJfKfBAKBQCAQCASCWBAC1AWCoihRQ4cvCGQZXvkX9fHyT9LVq5bc5M9fBoYUlqSrZW+1b7yOLAemvVxgYIDuRx8FIPcrX8GQlRV1fPqNH6Ts8d+Q6a0HfICEqbd/2vtImDO7AFWA2nq86+ztIxhG/pPjv8XhdTA/c37EHCgAe24ellQbcsBPb3NTTEsMBd1PKStWoM/IiGt7oSDykydRvN64rtXQBKhdbbvwBmKfo2WohV8d/hUA/7LmX7AYRjsmeltaQVHQGWQMReVx7UdzQ9aEcUM6etX3wtnqgKcxWoI3WjpnMJlCZYEeVw/ZJTYWrYsuvtkyLXz4n1dSviSbgE/m1V/U8sZvN4OikFtRRVpWTlL2q3W/K12UhU4/+k+n6IAnEAgEAoFAIBDEhhCgLhCa+0YYcvsx6XVU512gN0Lv/hFa94MpDa6+L5QRlFdVDbnzmJvWgyXFzFBvN03vHZr2ct0//gmBgQHM1XPJ/PjHYrrGunIlJV/7FACSzs6Jz38jVBo2qwT80KJm4OyT57PtRBeyHKmP3wyz5CMcS7HxlEF1M9170b0ht1M4JEkKuaBizYFKtPwOwFhcjM5uR/H58JyOr+xPY2H2QrIt2Qz7h9nfuT/m636w7wd4ZS9rC9dyddnV4855GxvV/aX5kezxlXKG8p+KwnTA0xxQZymAXKM0S80AG+uAAkjNUAUoOdDPFbdXh9xO0TBZDNzwhaUs3VACwMl3dgNQuSw57ieAptpeACoWjy+HPBkUoKqFACUQCAQCgUAgEERFCFAXCJr7aX5BGibDBfiyugfh9W+rj9d/A6ffiKu/DySJvPJKyF2IQaewqFp1Oxze+ur0ljtxkv4//hGA/H/9VyRD7NkuIzrVfSXpMum2zqH5C1+k74nfT2s/cdNZC14nitlOm6mCHqeXw0FXzGyjWNJ5qLgcRZK43pjH6oKpRQFNgIolB0oeGWE4KDgkIkAlI4hcJ+lYV7IOiL0Mb1fbLl4/8zp6Sc+9a+6dVA7nbVLdXyZbAOIUoELluOEcUFoHvLPsgAqV4PUPoyiqOKooCs4BVZjKzPNSVJ0Z83w6ncS62+dx2W1zkP3q3671lB23K7Yyzmg4+z30NDtBgrKa8QJUXadagjcvX5TgCQQCgUAgEAgE0bgAlYr3J6MB5Bdo+d2b3wVXF2RXw0Wfo6tRFSayikowWiyQtwCAxQVqOc/pfbsZHhxIaClFUej8r/8CWSbtuutIvTi+DnL97W0ASPpMBuavB1mm8zvfoeM7/4USmH5pYEyceUfdQ+laLqtWHSVnqwzvlYZXOBAYIkWWuefMCfA4p7wmPw4ByrV7N4rHg6GwEPO86oT2GBKgEgwih9EyvB2tO6Yc65N9PLznYQA+vuDjzM2cO2mM5oAypfnjEqAGh32cCbqKaqI5oM6yAFWUkYJOArdPptvpAaBubycjTlWYSs0YiXZ5RLKLHKB4kKQUelptPPPd/Qx2D099YRSagt3v8ivspKSZQsd7nR56XaIDnkAgEAgEAoFAEAtCgLpAqA2GDtdciAHk3Sdh98/Ux5seAoOJrmB7ek2oIHeh+sNzisK585EDAY5s35rQckOvvsrwnj1IFgv5X/+XuK8PCVC6DPrkLNLv/mf1+BNP0PLFLxFwuhLaV1wE858ou5gNC86eADXsG+YH+34AwD96DRS4h+DIs1Nel1epCjLdTQ3IU4h2o+V3VyQcqp2MIPJLCi/BoDPQ5GiiyRE9u+pPx//E6cHTZJoz+cLyL4Qd421qBIICVFphzPs40q6K0SWZKWRYTZPOD/WeGw4ok0FHYbpWhjeC1+1n5zOnkPSq68nZ15nQvPUH1NLTypWrSMtKYaBzmKcf2k/bqYGE9xoqv1sywf0UDCAvzUrBahId8AQCgUAgEAgEgmgIAeoCQFEUjoQcUBeYAKUosPkbIPth/g1QfQ0wmg2klWppDih661i8QR1zeOuWUGlPrMgjI3Q+/F0Asv/xHzAWx9/Frr+9FQB7TgGKrOBa80GKH30UyWzG+eabNN1xB7729rjnjRlFCTmgKLuE9fNVoeFw6yBdDvfMrRuGXxz+BV0jXZTYSvj0QjUbiwO/nfK6zIJCTCkp+H1e+lqbI45TFGVa+U8aIQHq+PGEXWo2k41VeauA6GV4vSO9/M+h/wHg7pV3YzeFdy16GxoAMMfpgDoSpRumoiihEryz7YACVSQDNQdq/+YmXINe0rLzARhob0OR5bjnbDi4D4CFl13CbfeuJrcsDbfLx/OPHuTkno645wv4ZJqPq80EyhePDzQPBZBfqLl7AoFAIBAIBAJBEhEC1AVAh8NNr8uLXiexoOACuxE68Qqc3gp6E1z3X6HDWgleyAGVXgZGKwS8LFhQgtFsob+thdYT8Tlaen/xS/zt7RiLisj++7+Pe7uyHGCwUxWXypaoLp6mw73YN11H+e9+iz4nB8/x4zR+9HZGao/EPX9M9DeCswN0RiheSV6ahaUlqhix7UT3zKwZhjOOMzx+5HEAvr7m65hXfAp0BjUcvTP66yLpdORVTB1E7qmrw9/WjmQ2x10qORZTRTk6qxXF7Q4JP4kQSw7Ujw7+CKfPyaLsRdw89+awY+SREfydqmPNmGsDY0rMe9Dy4MKV4444Bgn4fCBJ2LKyJ52fbUKd8M4Mcuj1MwCs+9hqdHo9fp+Xob6euOYb7Oqkt+UMkk5HxbJVpKabueVrK6lanovsV3jtV0fZ81JDXMJ0a10/fk+A1HQTOaXjy+xOBvOf5or8J4FAIBAIBAKBYEqEAHUBoAUOV+fZsBgjdxc77/C54dVvqo8v/QpkVQEwMuTA0a3enOdWqMfQ6SBnHgAmRwPzL1XzeGq3bol5OW9LC72//CUAefd+A53FEveWh3q6Cfj96A0G5l0UFKCO9CLLCilLl1L55J8wV8/F391N06c+xdDrr8e9xpRo7qeiFSHhYsP82S/D+97e7+GTfVxWdBnrS9dDWj7M26SePPi7Ka+PJYhccz9Z116ELiV2kWYikk6HeaFaxjmdMjwtB2pf5z5cvsmllrU9tfyl7i8AfPOib0bsBug9o4oxepOMITfeAHJVgKqJEkBuy8hEbzDGNe9MUBoUoNx7e5H9CqWLspizIp/0vAJgtJw1VuoPquV3xfMXYbGpopDRrGfTXYtZcW0ZAHtfauD1Xx8l4IvNXdV0WC2/K1+cPanE86RwQAkEAoFAIBAIBDEjBKgLgNoLtfxu109UN09aEVx+T+hwV0M9ABn5hVhSxzgP8lQBge7jLLlqIwAndr2FZzi2zKWuh7+L4vViveRi0q69NqEtazfM6fmFFM3LxJRiwO300dWoioTG4mLK//AHUi+/HGVkhJav/H/0/urXcZcKRmVM/pPGVcEcqLdO9eD1x1/WFC87WnawrWUbBsnA1y/6+uiN+8o71Z/v/hH8nqhzaO62aA6oZJTfaVhqph9EXmGvoDStFL/sZ1fbrnHnZEXmwT0PoqBwY9WNLM9bHnEeb6OaIWVM84M99vwnl8dPfY/6fg9Xgjd0jnTA0yjNSqHSp8Pa41O72H20GkmSyCxURbd4BagGLf9pxfhOi5JO4tJb57L+k/ORdBIn93Ty/A8PMuL0Rp1PURQaD6surPIlOZPOaxlQ8/KFACUQCAQCgUAgEEyFEKAuAI5oJTdhOl6dtwy2wg41vJqN/wnmUaGps+EUMCb/SSM3mAPVdYzC6vlkl5Th93o4/vabUy7n2rmToddeA72egm99K+Eway3/KbOwGL1eR+nCLGA0xBhAn5ZG6c8eI+PjHwNFoeu736Xj2/ej+KbfLh4Yl/+ksaQ4nRybGafHz97GvuSsEwFfwMd396o5Wp9c+Emq0qtGT869WhUUR/rh+EtR5wk5oBrrw2YBBQYHGTl4CADbleunve9kBJFLkhRyQU0sw3up/iXe634Pq8HKV1d9Neo8Wgc8c5wB5MfaHSgK5NvN5KaZJ513hASovJjnnElK0i1cNaI6sZZeVUJmQSpASIAa6GiNeS6fx03zkcMAVK1cE3ZMzbpibvzKMkwpBtpPDfL0w/vp74gsUA90DuPocaMzSJQsyBx3rsfpoc/lRZJEBzyBQCAQCAQCgSAWhAB1AaCV4F1QDqjX/gN8w6qIsvjWcae6JgaQa4xxQEmSxJKrrgPUMPJoKD4fHQ88AEDmJz+Bubo64W33d6iODe0GWuuapbkoNCSDgYL/+A/yv3kvSBIDTz5J8+c+T2BoKOG1AXD1Qs8J9XHp2tBhnU4KhZHPdBne74/9nkZHI9mWbD6/7PPjT+r0sOIO9fEUYeRZRSUYTGZ87hH6OyaHtjvfegsCAczVczGVxB8WP5GQAHXsWELh1xpXFKsC1I7WHciKOo/T6+S/9/83AJ9b9jnyrNEFIG9T0AFl84M99ucWckNG6IY51Ku+9udCADmA+8ggWbIOl6SwfFN56Hhmofqc43FAnal9D7/Piz03j+ySsojjShdmceu/rCIt24Kje4RnvruflhP9Ycc2BsvviqszMFnGd7nTyu9KM62kmC6g0meBQCAQCAQCgWCGEALUeU73kIcOhxtJgoWFF4gDqmkn1D4Nkg6u/y5McCNNCiDX0BxQPXUQ8LFw3Xr0BgOd9aeilnH1/+EPeE+dRp+ZSe6XvzytrWs3zJoAVVaTDRL0NDtxDYwvOZMkiaw776Tkpz9Fslpx7dxJ48c/jrcldtfHJJp3qz9z5kPq+JBprQzvjRkUoLqHu3ns3ccA+Oqqr2IzhXGGrLgDkKB+m1piGQGdXk9ueQUAXUHX21iSWX4HYK6qQjKbkZ1OfM2RO+9NxeqC1aQYUugZ6eFY3zEAfv7ez+kZ6aHcXs4dC++Yco6QA8oeXwlebZsqRofLf4IxDqjssy9AuQY9HHu9BYA3LT56PKMOwIyC+EvwGg5q5XdrpnQwZhWlcts3VpNfaccz7OfFHx7i2M7JazXVBsvvFocpv+vUyu+E+0kgEAgEAoFAIIgFIUCd52jld1U5qaSaDZPOy3KA5iPvceztN2k+8h6ynFiL+VlDDsBfv64+XvUZKFw67rRneDh0UzrJAZVeCsZUkH3QV4/Vns7cNWoZWu0b4V1Q/t5eun/8EwBy7/kn9PbpiXgDmgAVvIG22k3klatzji3DG0vaVRuoeOJ3GPLy8J46TePttzNy6BBKIIBr9x4GX3oZ1+49KIEYXrsw+U8al1fnYNBJ1Pe4aOyJLRcrXh498CjD/mGW5Czhpjk3hR+UWQ5V69XHbzwAh5+Ghh3qaz+BvEo1yH2igKgEAri27wCSJ0BJBgPmBfOB6ZXhmfQmLi5U//5/PPZHfnPkNzx+dLQboElvmnIOTYAy2gJqyeIUBGSFXad72XlKFUwWReiGqWVAnQsOqHf+chqfJ0CfBY6YAjT3jYTOaQ6owa4O5Bje94qiUH9gHwBVK1dPMVrFajdx8z+tYO7qPGRZYetvj7PrudMosoIsKzQc7qHt5AAApTVZk66v61IdUNUi/0kgEAgEAoFAIIiJyYqF4LziSFvk8ru63TvZ+puf4xzTytyWlcNVn7mL6rWXztoe42L/r6HzMFgyYMO/TTrd3agGkKdl52K1T3jOOh3kzoO2g9B9HHLns+Sq6zixawfHdmzjijv+DqNpfC5O13//N7LTiaWmhowPf3haWw/4fQx2dQKjN9CgluF1NTpoPNzDosvDiwmWRYuoeOrPNH/hC3iOHqPxjk+hS01FHhwMjTEUFJD/rW9i37gx8ibC5D9p2C1G1lRksau+l63Hu/i7yysTeJaRebf7XV44/QKgdnjTSVH07fxFUP8GvPek+j8AexFsehgWjQpX+RE64Y289x6BgQF0djspK1Yk7TlYFi3C/e57uI8exX799QnPk5uiCjzPn34+dMykN+ENRA+9Bgg4HAT61JwuUwwh5Jtr27n/xaO0D7pDx/7jhSMgwabF4691nCMh5B31gxx/pwOAzjkp0DpCc/9w6HxaVjYGowm/z8tgd2dI0I1ET3MTQ73dGExmSmuWRh07FoNJz8a/qyEjz8q+vzZyYHMTrSf6cfa7cQ2MvlYvPHqIdbdXM2fFaOnkSeGAEggEAoFAIBAI4kI4oM5zImW+1O3eyQuPPDBOfAJw9vXwwiMPULd756ztMWaG+2Drd9THV/3bpBIyGHXCTHI/aeQGc6C6jgNQtngp9tx8PMOuSc955PBhBp95FoD8f/1XJP30clwGuzpRFBmj2UJq5qhjonyx+jyaj/dHbf1uzM+n4ne/w7J4Mfj948QnAH9nJ613fxXHlgiZVr4RVXyDsA4oGFOGdyK5ZXiyIvPg7gcBuHnuzSzJXRJ58NEXYNf/TD7uaIc/f1o9HyRvjAA1tlNgqPzu8suQDMnT0UM5UEeOJDzH602v8+eTf5503Bvwcs+2e3i96fWo12v5T3pLAL1RiZoBtbm2nS88cWCc+ARqae4XnjjA5trR7Cy/18vw4ABwdh1Qiqyw48mTACy4tJDsMtVBdKZvVICSdDoyQp3wpi5JrQ92vytbvHSSyDwVkk5i7U1VXH3nQiQddDY4xolPAK4BD5v/t5bTB9XPjaIo1AUzoKrzhANKIBAIBAKBQCCIBSFAnefUBkvwaopHS8dkOcDW3/w86nVvPP7zc68c743/Uruj5dXAqs+GHaJlAU3Kf9LIC+ZAdavZO5JOx5IN1wJweOuroWGKLNP5nf8CRSH9QzdhXTl9F412o5xRWDQugya3NA2r3YTfE6CtbiDqHJLFgr+7O/zJoADT+cCD4cvxWg+o5Ye2AsisCDvFhqAAtbu+D5fHH/0JxcHzp57nSO8RbEYbd6+8O/JAOQCbvwEoYU4Gj22+N1SOl1Nahk5vwO1y4ugeFc2c25Kb/6QxKkAdHSd4xUpADvDQnoeijnl4z8MEonz2vI2qAGVO84PeDCmZYccFZIX7Xzwa7S/J/S8eJSCrvw0FxWiD2YzFdvZEk2O72ulqGsJk0XPJzXMozbIC0DxGgILRMtaBGHKgxuY/Jcq8tQWYrcaoY976cx2yrNDj9NI/7EOSYE6ucEAJBAKBQCAQCASxIASo85jBYV8oN6VmjAOq9diRSc6niQz19tB6LHGXR9LpOAz7fqU+vv5h0Id3tcTrgAKoWX8NkqSj5WgtfW2qSDT4wguMvPsuOquV3Hu+lpSnMBpAPt6xIumkkAuqsTb66zK8bz/+zs7IAxQFf0cHw/v2Tz43Nv8pQgjznNxUyrKseAMyb52KvpdYcXgdPHrgUQA+v+zz5KRMDmwO0bQTHNEEBQUcreo4QG8wklOmdkfTyvB8HR14jh8HSSJ13bpkPIUQ5upqMBoJDA7ib4s9AFvjQNcBOocjv34KCh3DHRzoOhBxTCj/SSu/i/Ba7mnom+R8Gr8WtA+62dOglvOF8p+yc6cM6Z4pPMM+3nlOfR3XfLASq91ESWZQgOofGTdWC/Lvm0KAGnEO0XZC/bzHmv8Ujva6AdxOX9Qxzn4P7XUDIfdTWZbogCcQCAQCgUAgEMSKEKDOY7QA8rIsK+kpo//l3jkQvqX4RGIdN+MoCrzyDVBkqLkFKsOLCj6Pm75WtWvWlA6o3lMQUG8m07JzqFyxCoDaba8RcDrp+sEPAMj54hcw5ueFnSpeNAdUuLya8iWqANV0OHwQuUZE91Ms47T8p/LI+V6SJCW9G97P3v0Zfe4+KtMr+cSCT0Qf7IwirkUYp73WmvjofHM7AClLl2LImhwOPR10JhPmajX4fCSBIPLu4dhev2jjtBI8c1ogavld11Bk8SncuHMh/2nvy42MDPnILLCyZH0JoH5/wWQHlFaCN9ARXYBqfPcAiiKTU1qOPSfxz7LL4Zl6UHDcSVF+JxAIBAKBQCAQxI0QoM5jtPK7xcXjO7fZMsKX7Ewk1nEzzpFnoeltMKTAtf8ZcVh3UyOKImNNzxiXsTSO9FIw2dRStN7R4OrFV6nB3Ue2vU7XT39KoLsHU3k5mZ/+dNKehnajrDk3xlK6MAudXmKwe4SBzuFJ5zUMubGJA5PGyQFo3qM+jpD/pLFhTA5UImVmYzk9cJo/HvsjAPeuuRejPnoJE7b82CYeM07rhKeVX4byn9Ynt/xOI1SGl4AAlWuN7fWLNm6cAyotcgB5XpolprW0cWe7A15fm4vDb6gC8uUfrUZvUP/5Kc1KUc+7vOPKQjUn4VQZUA3B/KfKlYmX3wGk2mPLjkq1mznZJQLIBQKBQCAQCASCeBEC1HlMbavaAa9mQgB58cIabFlRyqBQXUHFC2tmbG8x43XBln9XH6+7BzJKIw7VSrDyK+dELiGSJMidrz4O5kABVK1YgzU9g+HBAY4/Hwwe/9Y30ZlM038OQfraIwtQJouBouoMABoPRy59s65ehaGgIGLZFZKEoaAA6+pV4493HQPPIJjS1AytKKytzCLFqKfT4Ql1UUwERVF4aM9D+BU/G0o3cGlxDJ0Vyy9Vu90RqQRMUl0/Y1xcYx1QAbcb1y611DDZ+U8a0xGgVuatJN+ajxTh+UlIFFgLWJm3Mux5RVHGOKCid8C7qDKLwnRLtL8khekWLqpUxdqz6YBSFIUdfz6JLCtULsuhbNFog4E0i5GMYPbS2E54mpPQ0dON3xu+e6AsB2h4Vy1nrFqRePkdQGF1BqkZ0UUoW6aZwuqMUAnevHzhgBIIBAKBQCAQCGJFCFDnMaMOqPEClE6n56rP3BX12g133oVOdw5kl7z132rmT0YZXPqVqENH85/mRp8zTA6U3mCg5sqrAWhOt2K78sqkChg+jxtnryosTcyA0tByoJpqI5fhSXo9+d/6ZvCXMNKCopD/rW9O7tin5T+VromYn6VhMeq5bK4qUE6nDG9r81beaX8Hk87Ev6z5l9gu0ulh08PBXyY+v+Dvmx5SxwXJKa9A0ukYHhyg5403UEZGMOTlYV64MOG9RyNlGgKUXqfn3ovuBZgkQmm/f+Oib6CP8NkL9PUhDw2BBEabH9Imi5mja0ncd+OisOe0le+7cRF6nfrbUK/mgEpOyWk8NLzbQ8vxfvQGHZfdVj3pvFaGd6Z3VICypmdgSrGCojDQ2T7pGoD2upO4hxxYUm0UzZve+0Gnk1h3++S9jeXyj1YjSXCyU3VAVQsHlEAgEAgEAoFAEDNCgDpPcXr8NPS4AKgpsk86X732Um6651voJrSoN1tTuemeb1G9Nga3ykzT1wBv/0h9fN0DYEyJOnysAyoqIQfU8XGHq6yqUNedZiX1C5+Lf79RGOhQb5AtqTZS0ia/HgAVS1TRp61uAK87cgc6+8aNFP/wUQz5k8vV0j/8YewbN06+SMt/Krskpv1qOVBbTyQmQLn9br6393sA3FlzJ6VpkZ1rk1h0E3z0t5PdPfYi9fiim8YdNprMZBer8ze/8TcAbFdeMWNB2ub580GnI9Ddg68r/r/PNeXX8Mj6R8izjhd68q35PLL+Ea4pvybitZr7yZimVzU4e2QBCmDT4kIeu2MlRv34v0VBuoXH7ljJpsWjf+OQAyp7dh1Qfm+At56qA2D5taWk507+nJeGCSKXJCnkJuyPkAOldb8rX7YS3URRNgHmrMhj0+cWT3JC2TLNbPrcYuasyKPb6WFwxIdOdMATCAQCgUAgEAjiIrpVQnDOcqzdgaKoJTY5tvBlI3PWrEXSqRpj8fxFtJ44StmS5eeG+ASw5d8g4IGq9bDgg1GH+n0+eprVm/OIHfA08oJOiDEClOz14n7sf8ky+umzpXDy9AkuXr5iOrsfR39H+A54Y8nIt5Kem8Jg9wjNx/qYsyKyE8W+cSNpV1+tdsXr7mbk3UP0/+4J3IcPoyjKZPElJEBFz3/S2LBAFSEONQ/Q6/SQHeE9FInHjzxOq7OVPGse/7DkH+K6FlBFpgUfgLot8MePqcc+twNSs8MOz6ucQ09zE53Haqli5srvAHQpKZjnVOGpO4X76FGMefE7hq4pv4YNpRs40HWA7uFucq25rMxbGdH5pOFtaATAlBZQD0whQAGsn58XyvL69w8uZFFhOhdVZoWcT6CWwJ2tDKhDr59hqNdNaoaZVZsqwo4pCeZATQwizywsprP+FP1t4XOg6oP5T1XTzH8ay5wVeVQuy6W9bgCXw0OqXS270wX/nnVB91NZlhWL8RxwkQoEAoFAIBAIBOcJwgF1nlLbqpbfTcx/Gkt/WxsBrxej2cKlH70DgLaTx6YdPJ0UTv0Njr8EUrAkawo3S29zE3LAjyXVhj13CkEgd0wnPL+aHdP3m8fxnTlDedB4dPiN11BkebrPIoR2g5wRJv9pLLF2wwO1HC917UWkf/AD5H75y0hmM566OtyHD48fONAMjhbQGaB4VfjJJlCYnsLCQjuKAm+ejK1zm0aHq4NfHv4lAP+8+p+xGq1xXR9Cp4f514+WmfWeijhUc731+zxIRiOpl8Tm9EqU6eRAaeh1etYUrOGGqhtYU7BmSvEJRh1QJmtQiIkSQq7xXssgfhly08z83WWVXDIne5z4BDAy5MDvVbu82bKj58Mlk6E+N/tfUZ/TZbfOxWgO/zeI1AkvM0onvKHeHrqbGkCSqFgWPlMrUXQ6ieL5mcxbU0Dx/MyQ+ASMdsAT+U8CgUAgEAgEAkFcCAHqPEULIJ/YAW8sWtew3IoqCufNR6c34OrvY7CrM+I1s0LAB5vVnBzWfg7yFkx5SSj/qWru1KVX6SVqGLfsh77T+Do76fnZzwBY9vkvY7am4ujupKn23Wk9jbH0R+mAN5aKxerNf1NtL4ocuxCoT08n7Tq19G7gqafHn9TcT4XLwJQa85xXBV1QW+PMgfrBvh/gDrhZmbeSTRWb4ro2LNrrPyY0ftKQoAA1mGLCumYNutTYn2ciJEOASgStA57J5gMkSCuY8pq9jX0ArKnIjPjZ0NxPqRmZGIxTdCpMIjufPYXfJ1M4N525qyMLx6MleBMEqGAQeX/7ZAGq4eA+AAqr52O1Rxbik42W/yQ64AkEAoFAIBAIBPEhBKjzlCNaAHkUB1TnmMwko8lM/hw1vLv1+JGZ32A09vwcek6CNQeu/EZMl8Sc/wTjO+F1HaPr+z9AGR4mZcUKsm6+mYXr1gNweOuWRHYfFu0GWbthjkRRdQYGs55hh5fu5qG41si47TYAHC+/jOxyjZ7QAshjzH/S0HKgtp/sxh+IzQ22t2Mvmxs3o5N0fHPtN5OTwxQmNH4ieRVVALhNRgyXrJ3+mlNw1gQozQGV5gdbHuinFov2BQWo1eVZEcc4eme/A17ryX5O7etCkmDd7fOivldKQw6okXEOTa2kNVwGVH0w/6lqRfLK72JBdMATCAQCgUAgEAgSQwhQ5yFuX4C6LvW/wk/sgDeWrlDXOFW0KZ6v3lS3npjdm+pxOLtg20Pq42vug5SMmC6b+FymJOiqGX5nO44XXwRJIv/f/hVJklhy1XUAnNqzi2HHYFzbj8RADBlQAHqjjtIFmUD0bnjhsK5Zg7G8DHl4GMfmzaMn4sx/0lhemkmm1YjD7Wd/U/+U4/2yn4f2qK/dR+Z9hAVZUzvXYiIGB5TeHyDV4wNguKIsOetGQeuw529rx98/9d8mGSiyPF6AiqH8TpYV9gVfuzUVkQWoUP7TLAWQywGZHU+qweM164rJLY0u1hRnpCBJMOIL0OP0ho5rJa2u/j68I6PuKL/XS9PhQ0By85+mQlGU0RK8PCFACQQCgUAgEAgE8SAEqPOQ4x1DBGSFHJuJfHv48GhFlsc5oACKF9QA0Hr8LApQf7sfPA4oWgHL74jpEjkQULNeiNEBBZC7EEWGjt/vACDjIx8hpUZ9/nkVVeRXzUUO+Dm24434n8MEPMMuhgcHgKlL8GC0G15jDDlQY5EkKeSCCpXhjfRDV/D1LI1PgNLrJK6cFyzDi6Eb3tMnn+Zk/0nSzel8efmX41orKjE4oFxv78Q+7Aag1xWfcywR9DYbpvJyYPZcUP6uLhS3G/Q6jKmBmALIT3QOMeT2YzXpWVgYWRAJdcCbJQfUkR1t9LY6MVsNrL2pasrxJoOOQrsFGF+GZ0m1kRIsr+sPdpoEaDl6GL/Hgy0rm9zyyiTvPjLdQx4cbj86CapyZ7YMVCAQCAQCgUAguNAQAtR5yNgA8khlLYNdnXhHhtEbjWQFW9gXzVOdJn2tzUlz/sRFy344+IT6+Prvgi62t19vazN+nxdTSgoZ+VO7QgDIW8BAvRVP+zA6u53cr9497vSSq9Q8pcNbt0w7lF0rv0vNyMSUMnUgd/liNYi8q8nBsMM7xejxZNx8M+j1jBw6hKeuDpr3AgpkzwVb/OLChmAZ3htT5EANuAf48cEfA/CV5V8hw5IR91oR0colnR2qoBYG55tvkj6i/q00N9xMY6mZ3TK8UP5TdiqSjpgEKK38bmVZJgZ95M/TbHbAczt97H6hHoC1N1VhscWWOVUSKYg8lAM12gmvPpj/VLlidXLKQGNEy3+qyE4VHfAEAoFAIBAIBII4EQLUeUgo/ylKALnmfsotq0BvMABgtaeHxKi2k5HdJjOCLMMrX1cfL/s4lF4U86Wh8ruKOUgxilYBczHd76mOkNwvfQFD1vjypAWXXYnBZKa35QztddP7W2g3xhlT5D9ppGaYySm1gQJnjsTngjLk5mLbsB6AgaefGZP/FJ/7SePKebnoJPXGumVCAPRYfnLoJzi8DuZnzue2ebcltFZELHawB0sXw7igFFnGuX079hG1i9usCVCznAPlbQyW32UGBZsYSvD2NqqC3eqKzKjjhmbRAbX7hXo8w36yi23UrIvtMwHROuGp742BoNCrKMpZy38a7YAnAsgFAoFAIBAIBIJ4EQLUeUioA16UAHKtA97EzKTiBcEcqNkOIn/vT9C6D0w2uObbcV3aGeG5RKP78WcIePWY031kXrNq0nmzNZX5l1wOTD+MPBRAPkX+01gSLcOD0TDyweefR65PLIA8NJfVxKpyVbyI5II63necp04+BcC9F92LXjcDzo9cLQdqsgDlPnKEQG8vGZK67kBnO26XM/l7mMDsC1CNAJjswUD4OBxQ0fKfYDSE3J4TuRNdMuhuHuLIDlWQXXd7NboorqyJhDrh9Y2MO66VtWpCb19bC4OdHegNBsqWLEvGtmOmrkvkPwkEAoFAIBAIBIkiBKjzDK9f5kSHehMULYB8NP9p7rjjZyWI3O2A1+5TH1/59Zhay48lrg54gPvESfr/+Cf1mpWDSP0nw45bHCzDO75zO57hyO6fqdBujGPJf9LQyvCaj/YSiLEDnYbt8ssx5OcTGBjAuadWPZigAAWjZXhbwwhQiqLw4O4HkRWZ6yuuZ3XB6oTXiUpeMAcqjADl3PYmAJkXX4I9N18d1lg/M/sYgxZE7ms6Q2Bo5nOnQgHk1qAAM4UDqnVghLZBN3qdxPLSjIjj/D4frn5VqJpJB5SiKOx48iSKAnNX51E8L7orayKlWSkAnJnkgAoKUMGg/4YDqvupZNESTJaU6W47LrQSPOGAEggEAoFAIBAI4kcIUOcZdV1DeAMydouBkszwN1+KokTsGqcFkXeePoXP65nZzWps/y64utScorVfiOtSRZbpalDFhlgcUIqi0PnAAxAIkLYkj9R8b8Rw6+L5i8gsKsHv8XBi1/a49jWW0Q54sQtQeRV2LDYjXneAjlPx5XFJBgPpH75FXbvOCKm5kDV10HMkrgoKUDtP9zLiDYw7t7lxMwe6DpBiSOGe1fckvMaUaA6orsmd8JxvqgKUbf2VIRGys/7UzO0liCEzE2OR+pq6j0Xu0JcsQg4o04B6wB7dUae5n2qK7KSaDRHHOftUl53BaCIlLXLZ7nSp29dJ+6lBDCYdl3547tQXTCBUgjehFDQjlAGlfs60/KfZ7H4H4zvgzcsXDiiBQCAQCAQCgSBehAB1nnFEK78rjhxAPtTbw8iQA51eT05p+bhz6Xn5pGZmIQf8dJ6qm/H90n0S3nlMfbzpITCY4rq8v6MNn8eNwWQmq6hkyvFDr25hePduJLOZ/E9vCu4hvHggSdK4MPJEUBRltAQvxgwoAJ1OorxGdUE11iZQhnfrrQC4Oi1401bANIKY5+enUZRuweOX2VXfEzo+7Bvm+/u+D8A/LPkHClLjc67FRQQHlL+7G3et6vKyXXFFSITsvMCCyBW/H29LCwAmi/oZxx7dAbU3KECtLo9efjfUozrb0nJyZyyw2+v2s/MZ9TVZtamCtCxL3HOUBgWo9kE3vjGuQO1z5XYOMdjVESofnu38p06HhyG3H71OEh3wBAKBQCAQCASCBBAC1HlGbSiAPFr+k3ojmF1ShsE0XvCRJGn2yvAUBTbfC7If5m2C6mvjniIUpl5egU4fPXtIHhmh87sPA5D9j/+IcWEw6DyCAwqg5oqr0On1dJw6SXdTQ9z7Gxly4Bl2gSSRXhBjh74g5UtUAarpcM8UIydjKikhtVItAxqsn14ZkiRJYcvwfnn4l3QNd1FsK+bOmjuntcaUhDrhdcJwX+iwc/sOACw1NRhyc0MOqAstiNzX1gY+H5LJhMEaAFMamKO7bPYFA8jXTBFA7piFAPIDm5twDXiw51hYfm1pQnPk2syYDDoCskL7gDt03GixYMtSPyuHtvwVORAgs6iEjDg/b9NFcz+VZ1sxG0QHPIFAIBAIBAKBIF6EAHWeUduqClA1RVN3wItUsjajQeRyABp2wOGnYccP4PTfQG+C6x5IaLrRUsLwJT1KIIBr9x4GX3qZ9m/fj7+tHWNREdn/8Pejrpq+evCHLze0pmcwZ/VaAA6/Eb8Lqr9NzX9Ky87BaDLHdW3ZoiwknUR/xzCOnpGpLxiLLJNRpjqnBnaeQgkEprggOmoZnsxfT77F/9v6BP+960/8uvbXAHx9zdcx6+N7bnFjToP0oHAxxgUVKr+78kpg9D3d196K1x3n3ywBZkuACuU/FeaoZrYpAsgHh32cCAoiq2LsgGdPogAlywqtJ/o5ubeDE3vaOfCauv/LbqvGYExMnNHpJEqDZcWRyvAOvfoyAJXLJzcWmGnqutT8p3kigFwgEAgEAoFAIEiIyMEhgnOOgKxwtH20BC8SWge8SKHdmgOq7eRxZDmALlldzY6+AJu/AY628cerN0J27B3sxhLtuTi2bKHzgQfxd3SMO562aRM6iwXMhWBOB88g9J6C/Jqwayy56jrqdu/k2PY3uOITn53kGotGfyj/KfYOeBpmq5HCOem01Q3QeLiXpRumLjEM0XMCW14velMB/p5+XG+9FRJpEmF35zZS5/4Yn3GQp5pHjxemVLGhdEPC88ZF7gIYbFZzoMovRfF6cb39NqDmPwGkZmRiy8zC2d9Hd2NDSEydKTQBylvfgDw8jM5qnZF1vA2NAJg0cWOK8rsDZ/pRFKjItpKXFr3cTeuAl5adHAHq9MEudjxZh2tgvKibXWKjclnOtOYuzbJyuttF85gg8rrdO+k8rTYS8Adz647teIOSBTVUr710WuvFQ10o/0kEkAsEAoFAIBAIBIkgHFDnEfXdTtw+mVSTnsrsyBkkU7mGcssrMVpS8Ay76G0+k5zNHX0B/vzpyeITwPGX1fNxoihKRDeXY8sWWu/+6iTxCaDv17/GsWWLmouklXaFCbfWKF+6nLTsXNwuJ3V7d8W1x1AHvDjyn8atHeyG11QbZxnemV3o9JC+THW/DDz9dELrA3xvx1P8ofE7SIbxYeiKAm3D9Xz/rcTnjgvtteo+AcDwgQPILhf67GwsixeHhs1mDpQhNxdDbi7IMu4TJ2ZsnZADKjvoNEuL/n4K5T9VRM9/guQ6oE4f7GLz/9ZOEp8Aeluc1B/qntb8pZmqwKd1wqvbvZMXHnkAn2f8eiNDDl545AHqdu+c1nrxoJXgzRUB5AKBQCAQCAQCQUIIAeo8Qst/WlRkR6cLHybsGujH2d8HkkReeWXYMTq9nqJ5atex1uNJKC2SA6rzCSXymM33quPiwNHdicflQqc3kFNaFjquBAJ0PvCgqpBEoPOBB9WytLxgd7XuyDlQOp2exRuuAaB266tx7XGgPXEHFIzmQLWeGMDniePvc+YdANKvWwfA0Bvb8HfHf/Pv9fv5Xd2PgMk55trvvzv5I7x+f9xzx00oiFwVC53bguV369Yh6Ua/qjRh9ULKgQp1wLMH39NTOKBizX+C5GVAybLCjiejNy546891yHKU74EpGO2EN4IsB9j6m59HHf/G4z9HjvN7JREURaGuM1iCJxxQAoFAIBAIBAJBQggB6jyiNtgBr6Zo6gDyrKISjJbIpTlJDSJv2hne+RRCAUerOi4ONIdLTlk5eoMxdHx43/6wzqfR5RT8HR0M79sPuUFRI4oDCmDx+mtBkjhT+x4DHe0x7zHkgCpMzAGVVZhKWpaFgF+m5UR/7BeeUZ1alkuuJ2XZMvD7GXz++bjX/8O721D0AxGb6EkSKIYB/vDutrjnjpvQa6WKhaH8p/XjSwtHg8hPzfyemJ1OeCEHlDUYvh0lA8rjD3CoZQCY2gGlKErSHFDtdQNhnU9jcfZ7aK8bSHiN0qxgBlTfMK3HjuDsi+4MHOrtofXYDGTZTaDD4WbIo3bAq8wRHfAEAoFAIBAIBIJEEALUeYQWQB4t/0kTbSLlP2mMBpEn4aba2ZnccUG6IjyXWJ0+/u7umBxQAPbcPCqWrgCgdttrMc2vyDL9napYlagAJUlS/N3wBlth4AxIOihZQ8ZHbgNg4KmnUaK4wsJxxhFFyEtg3LTQSvBcXXhPvIe3oQEMBlIvu2zcMK0Er6flDH6vd8a3NeqAii5iJors9apd8ACTKdgBMEoJXm3rIF6/THaqiaopxBC3y4nPo4pa082Acjmii0/xjgtHSbAEr7lvGOdAbIJsrOOmw8mg+6lCdMATCAQCgUAgEAgSRghQ5wmyrHC0TQsgj9wBLyTaVIXPf9IonDsfSadjqLcbR0/X9DZny0/uuCCdEbKsDLmx3UgbcnNHXTV99eBzRx2/5KqNANRuex05hq5yzv4+/B4Pkk6HPTe+5zaW0Ryo3tgEpGa1/I6CJWBOw3799eisVrxNTYzs2xfX2mX2gqSOmxZmG6SrpZbOV/4CgHXlSvRp4zN30rJzSEmzo8gyPWcaZ3xbmgDlqatDngHBy9fcDLKMLjUVfSD4WYxSgrc3WH63uiITKZJ1LYjmfrKmZ8QVrh+OVHtsnRBjHReOsmxVgOp1edGnRv6eG4stY+oyxOkyGkAu8p8EAoFAIBAIBIJEEQLUecKZvmGGPH7MBh1zcyNnkEQK7Z6I0WIJOYum7YIqv3SKtvES2IvVcTGiKAqd9eE74FlXr8JQUDA5tCi0nIShoADr6lWQVgCWdFBk6I2eXzNn9VpS0uy4+vtoODS1kNMfzH/KyC9Ab0i8oWTJ/EwMRh3Ofg+9ra6pLwjmP1F2CQC61FTsH7gBiD+M/PoFy0CJ7OhQFJD8GXxi2fq45k2YoGPN+bZaYhius58kSbMbRF5YiD4jA/x+PCejv4cSIZT/VF6G5NIEqMiZYvuCAeRrYgggdyQxgLywOoPUjOjiki3TTGF1RsJr2C1G0lPUcls5rwpbVvSuemnZORQvDN/dMploAeTVQoASCAQCgUAgEAgSRghQ5wlaAPmCQjsGffiXbcQ5hKNbLXPLq6iacs6kleHp9HDVv0c4GRSJNj2kjosRZ38vI45BJJ2OnPKK8TPq9eR/65sRllPXy//WN5H0+mAnvPHZQpHQG4wsuvJqAA5v3TLlHrX8p4wEO+BpGEx6iheoLo6YuuEF858ouzh0KOMjHwHAsflVAg5HTOs2DDbw2VfvBCmAokzOdNd+/9S8/w/TNAS2uMhdgOyTGD7aDEzOf9IYzYGaeQFKkqQxZXjJzxvyNgbzn4rzAQV0RrCGF15kWWFfk+aAiqUDnipoTTeAHECnk1h3e3XUMZd/tDpig4RYCeVADbi56jN3RR274c670MXxvZIodV0igFwgEAgEAoFAIJguQoA6T9ACyBcXTV1+l1FQiNk6dVBu8XzVOZCUIPLWA+pP3QShwl4EH/0tLLoprum055JdXIrRNNl1Yd+4kdyvfW3ScUN+PsU/fBT7xo2jB7VsoSlyoACWbFCvqz+wF2dfb9Sx/R3T64A3lgqtDO9w9DVxD0JnUAQpHRWgLEuWYJ43D8XjYfCll6Zcb2/HXu746x00DzVTbCvmQ6VfQCdnjBsjBTK4c85/8C/rPhLXc5kWeQtxdZpRAjLGkhJMVeGFVK0sczYcUDCzQeQhB1ReMNstrQB04b+aT3c7GRj2YTHqqInyXaCRTAcUwJwVeWz63GIMpvH7s2Wa2fS5xcxZkTftNUKd8PqGqV57KTfd861JTqi07BxuuudbVK+N3VWZKIqicCrUAU84oAQCgUAgEAgEgkSZJVuDYLocaZs6gLwrQmZSJIrmq86gnuYm3E4nFluC/3W/oxb2/Z/6+BNPgd6oBo7b8tWyuwQcCp31U5cS6ozq29eybBlZn/oUhtxcrKtXqc6nseQFHVAxCFDZJaUUzV9E24mjHHnzb6y95aMRx4Y64E3TAQVQviQH/niSjvpB3E4fFpsx/MCWvWo5YWbFuJwgSZLIuO02Oh94gIGnnybrE5+IuNZzp57j/l3345f9LM1dyo82/IjslGzu89/FH97dxu/31VLfqeOLF1/L19YtnPZzi4vc+TjbVMHRduWVETOONAdUz5kGAn7/tEogY2Emg8hDHfCyzdAFpE2d/7SiNBNjBCfkWLQMqLTs6QtDGnNW5LH7hXr624dZfm0pFYtzKKzOmLbzSaNUCyLvHwageu2lzFmzVu2KN9CPLSOT4oU1s+J8AmgfVDvgGXQSFdmiA55AIBAIBAKBQJAowgF1HqAoymgHvKIoHfAiZCZFIjUjU+3epii01SV4Y60o8Mo3VFFk0Ydg7lVQuQ6W3Kb+TPAmsatx6m5+w/tV11Xa1VeT/sEPkLr2osniE0BusBNeV2zPMRRG/sZrKLIccdxAe/IcUGlZFrKKUlEUaDoSxQU1If9pLOk33YhkMuE5eoyRI5NLxWRF5kcHfsS/v/3v+GU/myo28X8b/4/sFNV9ZTIY+Myqa/j00psJDM/hUHNspXzJRMmeh7PdAoDt4hURx6XnF2C2phLw++ltOTPj+woFkR8/juLzJXXukANK+2hHyVMbzX+KLXjb0ZtcBxSAzxtgoEMVh5ZfU0bx/MykiU8AJWMcUBo6nZ7SmqUsvOxKSmuWzpr4BKP5TxU5qZgM4p9MgUAgEAgEAoEgUcT/mz4PaBt00z/sw6CTmFcQ2aWkiTZTBZCPpWj+NHOgjvwFmt4CgwU2fiexOcIwVZi6oigMH1AFKOuqldEn0xxQ/Q1TdsIDmH/x5ZhSUhjobKf5aG3YMXIgwEBnB4Aq4iWBiiWj3fAiEhKgLp50Sp+RQdq11wKTw8jdfjdf3/51fnH4FwDctfQuHr7iYSwGy6R51lSq2UIHmvrxByILcDOBp6EF/4geSS9jLbdGHCdJUijnbDZyoIylpehsNhSvF099Q9LmlV0u/F1qTpPJOqIejCJA7W1SBahY8p9gjAMqiQJUb4sTRQGr3URqeuId7yIxWoI3kvS5E6GuU+Q/CQQCgUAgEAgEyUAIUOcBmvtpXn4aZkP4//LvGR4OdWWLJYBcY1pB5F4XbAmGj1/+T5BRFv8cYRgeHMDZq4ZxR3ouvjNnCPT0IBmNWBYvjj6hLR8sGapLq+fklOsbLRYWXKaGXx/e+mrYMY6ebuSAH73RSFp29E5dsVK+WJ3nzJFe5HDCj98LLcHufGEcUAAZH7lN3d+LLyGPqDfwPSM9/P2rf8+rja9i0Bn4zmXf4SsrvoJOCv/xn5eXRprFgMsb4HjH0DSfVXw433wTgNR8L7qBU1HHzmYnPEmnw7JQFTKTmQPlPaO6t/SZmegDQeExQglex6Cb5r4RdBKsKMuYcu6A34+zXxWskumA6j6jvidyy2YmD6k0MxhC3j+MMjEZ/ywQ6oCXJ/KfBAKBQCAQCASC6SAEqPOAI1r5XXHk0OHuxnpAdTpY7ZHL9CaiBZF3nD6JP97SorceBUcLpJfBZXfHd20UNEdLZmExppTwLhit/M6yZAk68xQuDEmKKwcKYMlV1wFQt2cnI87JIkyoA15+IVKEwOh4KaiyY7Ya8Az76WgIU/7W8R74RyAlC3LmhZ3DetFFGEtLkZ1OHK++yqn+U3zy5U/yXs972E12fn7tz/nQ3A9F3YdOJ7G6XC3x2hss+ZotnNtUAcpW5J7ytZrNTngwNgcqiQKUlv9UXg5D7erBCA6ofUH308JCO2mWCBlhY3D29YKioDcaSYnjO2EquptnVoAqzkxBkmDYG6DX5Z2RNeLhZJcIIBcIBAKBQCAQCJKBEKDOA2rbgh3wogSQay6QWPOfNDILi0ixpxPw+UIZUjHR3whv/1B9fN13wJgS17rRmKr8DmD4wH4ghvI7jThzoPKr5pJbXknA5+PYjm2TzvcnMf9JQ6fXUbZILa0K2w3vzC71Z9nFqqgWBkmnI+PWW9Xhv/8Vn3rlU7S52ihLK+P3N/yeNQVrYtqLVuK1Lxh6PRv4+/sZefddAGyFbuiKLkBpYftdTfXIcmDG9zcTnfBC+U8VFeBQ31MRBajga7EmzvI7e05uxDD3RAg5oEpnRpAxG/QU2NXS0LE5UGcDtQOe+nxFCZ5AIBAIBAKBQDA9hAB1HqCV4NVECSDvalDFo3jyn0DN0ikO5UBNDq6OyKv/CgEPVF4BC2+Ka82p6IpBTBsJOqBSVsYoQIUcUCdiGi5JUiiM/PDWVyeVAoU64CUp/0mjfIlahtdU2zP5ZJT8p7Gk33ILik7CeLiOtI4hVuWv4vc3/J6K9IqY96GJHHsa+2atDMq1YwcoCuaqMoypMnRHFwszi4owmM34PR7629pmfH8hB9SxY1HD6ePB26g5oMpGBagIJXiaG211nAHkadnJK78L+GT62lwA5JTNnCAz2gnv7OZAtQ26cXkDGPUSFTmiA55AIBAIBAKBQDAdhAB1jtPlcNM15EEnwcLCyI6DUQfU3LjXCOVAnYjR2XF6Kxx/CSQ9XP/diG6cROmcIkzd39eHt0ENgrauiNwpbRy589WfU4gaY1l4+Qb0RiM9ZxrpPF037txAR/IdUABlNVkgQW+ri6G+MYHpijLGARU+/wkgIAd49Mzj7A9GZ93VVMXPr/05GZaMuPaxtCQdk15H95CHM7PkQgmV3224GpBguBdcYYS4IDqdnrxyLYg8DvdegpgqK5EsFpTh4ZBwNF1CDqiiXFXQhbAC1JDbx7F21Qm5uvwsBpC3OZEDCuZUA2lZkwPsk0VJVjAH6iw7oLT8p8qcVIx68c+lQCAQCAQCgUAwHcT/oz7HORIsv5uTa8NqMoQd4/O46WttAeJ3QMGoANV2IgZnR8AHr9yrPr7orlFnUZJwO50MBrvLRXouI8Hud+bquegzMmKbODe4z74G8MXmqrDYbMxbexkAh7duGXcu5IAqSK4DKsVmoqBSzfoa1w2v95QqyBgsULgs7LXDvmH+ads/8dujv+Vvy1VRcOm+PowJVKdZjHqWlKiOu72zUIan+P0433oLANvV14wG2k9RMjmrQeR6PZYFailnssrwQhlQWcEcM2s2GCcLOwfPDCArUAedkt8AAI5xSURBVJqVQkF6bMKPo0ftrjcjAeSlaUkt65vIaCe8sytA1YkAcoFAIBAIBAKBIGkIAeocpzYUQB65/K67qRFFkUnNyMSWGZs7Yix5FXMwmMy4nUP0tbVEH7znF9BzQr1RXn9v3GtNRVcwTN2em0+KLfxN33Co/G5V7BPb8iAlE1Bi6oSnoZXhHXv7TbxuVbjy+3w4ulV3SWZRch1QMNoNr+nwGPeP5n4qXgWGyaHrXcNdfGbzZ3ij+Q1MOhO3f+ZhDLm5BHp7Gdq2LaF9aKVe+2YhiHzk0CFkhwN9ejopy5bFHBp/PgeRBwYHCfSr4p5J6y+QFin/SX0N1sTofoKZcUB1N6uB3DMVQK4xWoJ3th1Q6vOtFvlPAoFAIBAIBALBtBEC1DlObZuW/xS5A15XDKHd0dAbDBRWqyVqrcej3Fg7u2Hbg+rjq++DlIyE1ouGVkoVLf8p7gByUMsENRfUFOHWYylZtISMgkJ87hFO7NoBwGBnB4oiY7SkYE3PiH0PMVK+JBuAluP9+L1B+1KU/Kfjfcf5+Msf51jfMbIsWfzfdf/H9XM/SPottwAw8PTTCe1DEztmoxOe8021/C513TokvT7m0PixDqhk5TJFI5lB5Jr7yZCXh84fdLvZI+U/qULV6hgDyAEcWgh5dt40djmekANqpgWooANqtso/I1EXCiAXDiiBQCAQCAQCgWC6CAHqHKe2deY64I0llAMVLYj8b/eDxwGFy2HFHQmvFY2pOuDJIyO4j6g3/3E5oADygqJGHDlQkiSxeIMWRq6W4Y0NIJ+JMqScEhupGWb8PpnWkwPqwQj5T9tbtvPpVz5N13AXVelVPHHDEyzPWw5Axq0fBsC14y18CYR0rypXHVCnu130Oj0JPZdYCeU/XXmleiBGB1R2SRl6gwHvyDCDXZ0zuUVgvANquuHs4zvgtasHw+Q/+QIyB5u1DnixBZArihISoJLlgAoEZHpbgg6oGeqAp6GV4LUNuPEHZl5YDIcsK9R1qc9XdMATCAQCgUAgEAimjxCgzmH6XV5aB9Syr0Uz6IACKF5QA0QJIm/dDwefUB9f/13Q6RNeKxpTdcAbee8w+P0Y8vMxFseZv5SAAwqg5sqrkXQ62k8ep6e5iX4tgDzJ+U8akiRRvlh1QTUd7oGhTuirByQoWRMa9/tjv+crW7/CiH+EtYVr+d0Nv6M0rTR03lRejnXtWlAUBp79S9z7yEw1UZ2n3njvb5q5HChfayueujrQ6bCtu1w9ONYBFUXo0RsM5JRVArOTA2WeMwfJaER2OPC1tk5rrtEOeOUwFBQI7ZNLOo+0OXD7ZDKsRubkxiaEeIZd+IIlo2k5OdPap8ZAxzABv4zRoic9NyUpc0YiL82MyaAjICu0D7qnvmAGaB0YYTjYAa88W3TAEwgEAoFAIBAIposQoM5htADyimwrdosx7Bi/z0dPs3ojm0gHPI2i6vlIko7Brk6G+iZ0HpNleOUbgAJLPwZlaxNeJxpe9wh9QXdR5ADy0fK7uN1HCTigAGyZWVStvAiA2je2jDqgZiD/SUMToBpre1G08rv8GkjJwC/7+a93/ouH9jyErMjcWn0rj13zGHbTZJEy47bbABh49hmUQPxp5FrJ174ZFKCGguV3KcuXj4bK58wDJBjpA1d31OtHc6BmvhOeZDJhnjcPIOTES5TxDihNgJrsgNLyn1aXZ6LTxfae1/KfUuzpGE2TM8MSYVwAeYz7SBSdTqIk8+x2wjsVdD9V5dhEBzyBQCAQCAQCgSAJiP9XfQ4Tyn+KUn7X29yEHPBjsaVNq9TGlGIlt0J1krSdmCDQvPcktOwFkw2u+XbCa0xFd2MDKAq2zCxSM8KXGiUUQK6hOaD6m8Ab302tFkZe++bWkEtMDgSQ5QRazMVAyYJMJD0M9br54wt7+ZuyAl/xGpxeJ1/Z+hX+dOJPSEjcs+oe7rvkPoy68AJl2sZr0aWn429rx7VzV9z70Eq+ZiIHSgkEcO3ew8BTTwFq/lMIkxUyK9TH51AnPEheEHmoA15F+ZgSvMmuOu1vn1D+0wx1wJsNzmYQeUBWeO2o2o0zM9VIQJ5euaVAIBAIBAKBQCAQAtQ5TagDXtHU+U95lXOmnUc0mgM15sba7YDX71MfX/EvEUOSk8FU+U9KIMDIwYNAnAHkGqk5kJJFvJ3wACqXr8KSasPjHKKvpRmAPc89xS++9PfU7d4Z/16m4OVnf4lf9gHQ33QVxzv/g0dfX8eXfvZPvNX6Fha9hUfWP8JnF3826uuuM5tJv/FGILEw8jVB0aO2dZARb/LENseWLZy6+hrO3HknnmNqSWT/E0/g2LJldFAoB+pE1LnGdsKbbi5TLCQjiFxRlPEOqFAJXtGkcfsa48t/gjEd8LKT2QFPCyCfnTyk0izNATUyK+tpbK5t5/KHt/KHPern/J36Pi5/eCuba9tndR8CgUAgEAgEAsGFhhCgzmG0ErzFxVPnP00ngFyjeH4wB2qsALX9e+DshKw5cPEXpr1GNEazrMKXEnpOnkR2udClpobKoOJCkmIOt57I6X27cbuck447+3p44ZEHkipC/eUPP6N1ezU6xTDueIo3gzVHP8ai/lX8etOvuab8mpjmy/iIWoY3tHUr/t7euPZSkplCvt2ML6DwbstAXNdGwrFlC613fxV/R8e444G+Plrv/uqoCJWrdmacqmQyp6wCSadjZMjBUG9P1LHJIOSAOnIkYcEr0NuL7HKBToexIAdGgiWOEwTehh4XvS4vJoMuaiOCiTh6k+uAUmSF7mb1/Z8zwx3wNMrOQie8zbXtfOGJA5NypzoG3XzhiQNChBIIBAKBQCAQCKaBEKDOUYbcPhp6XADURHFAJSOAXKN4virOdDc14Bkehp46eOcx9eSmh8CQnCyZSGgZPpHEtFD53YoVSPoEQ9DHhlvHiCwH2Pqbn0cd88bjP09KOZ7P6+HUO6poIDHe2aT9vrr+Rubbq2Oe0zJ/PpYlS8DnY/D5F+LajyRJozlQSSjDUwIBOh94MHywePBY5wMPqnlVMYbGG0wmckrK1KGzEUQ+bx7o9QT6+vB3dSU0h+Z+MhYVoXMHRTNDClgyxo3T3E/LSzIwG2J/zw8luQPeQNcwfk8Ag1FHZr41KXNOxWyX4AVkhftfPEo4SVE7dv+LR0U5nkAgEAgEAoFAkCBCgDpHORp0PxVnpJCVago7Rg4E6G5qAJLjgLJlZZOeX4CiyLSfPKYGj8s+qL4O5m2c9vzR8Hu99LScAWILIE+YBBxQrceO4JwYzD6Bod4eWo8dSXxfQba/9jRWb+Yk8UlDQsLqzWT7a/GV04XCyJ9+Om7XzppyLQdq+kHkw/v2T3I+jUNR8Hd0MLxv//jQ+Cn2rLnmZiMHSmexYJ6jvkcTDSIP5T+Vl8NQ0FVjL1RdemMYzX+KvfwOkp8BpZXfZZfY0M1SIHdp0AE1WyV4exr6onbcU4D2QTd7GpKfhyYQCAQCgUAgELwfEALUOUptUICqKYpcftfX2ozf58WUkkJGfnKymYrnB3Ogdr4Ip/8GOiNsejApc0ej50wjiiyTkmYnLXty23hFUVRRggQDyDUScEA5B2ITXmIdF43entjmiHWchv0DNyClpOCtrw/laMWK5oA60NQ/bfeHvzt6R7tx43LmgaRTy9Oc0Z1GebPYCQ+mH0Q+vgOeJkBN7qqodR9cE0cAOSTfAdV9Ri2/y52l8jsYFaB6nB6Gvf4ZX69rKLL4lMg4gUAgEAgEAoFAMB4hQJ2jHNECyKPkvoRCuyvmIOmS81KGgsgPvqUeuORLkD19d9VUTBWm7mttU8udDAZSli5JfCHNATXQBF5XTJfYInTkS3RcNLJzYpsj1nEaepsN+/XXAzDwVHzuqQUFadjMBoY8fk50DMV17UQMubEJIobcXDCmjHbCmyIHamwQ+WwwfQFqjAPK0aoeTBsvIncPeWjocSFJsLIs9tdbDgRw9qlZX/acvIT2N5FQB7xZFKDSU4zYLWoOWkv/zLug8tIsSR0nEAgEAoFAIBAIxiMEqHOU2jZNgJo6gDwZ+U8aWhB5+5CRgLUArvjnpM0djanC1LXyO0vNInQpKYkvlJoD1qDDaoruahrFC2uwZU12ZY0lLTuH4oU1ie8ryBXX3sawqR8lbBINKCgMm/q54trb4p5bK8NzbN5MYCh2Icmg17GiLAOAfU3TKz/yNjVGHyBJGAoKsK4OutxizIHKragEScLZ34crCU60qZhuJ7yQA6qyYnwJ3hj2B//W8/PTSLcaY57b2d+LosjoDQas9tiDyyOhKAo9Wge80tkToGBsGd7M5kAFZIXNR6IHjEtAYbqFiyrjc6MJBAKBQCAQCAQCFSFAnYOMeAOc6lJLXhZHCSDvTGIHPI0sm4RF78ev6Ola8v+BeXZuODun6ICnBZBbp1N+pxHKgYpNgNLp9Fz1mbuijtlw513odAkGo4/BaDIz92K1fCqSCDX34m6MpvgD4VNWLMc0Zw7KyAiOl/8a17VaCViiOVCKLNP1/e/T8R/3jR6c6HQL/p7/rW+OhsyPzYGKgsmSQlahWsI2K0Hk8xeAJOHv6Ii7s6Aiy3jPqHlnqgOqTT2RVjRunPa3jjv/qVstV0zLzk2KM3Ko141n2I9OL5FVlDrt+eJhNjrhuTx+7vrtPh7f2RQ6NtGDqf1+342L0OvC57MJBAKBQCAQCASC6AgB6hzkWIcDWYHcNDN59vDlHoos09VYDyTXASX97dsUp6juq9ZA0RSjk0PA76fnTPQw9aQEkGvkzld/TiFqjKV67aXcdM+3Jjmh0rJzuOmeb1G99tLp7yvILZ/4PIXrjuMyDUw6JyFx6SWfSGheSZLGhZHHgyaC7G3oizvEXB4ZofXur9L7y/8DIOdLX6L4hz/EkJ8/bpwhP5/iHz6KfeOYwPvc2MVC7XMwG0Hkeluqmt8EuI/G/j4C8Hd0oHg8YDRiLCoaFaDs4z9vWtfBs5//FAwgL7ahN8zuPxkzHUTePjjCR362i78d78Js0PGTT6zgZ3espCB9/PduQbqFx+5YyabFycnaEwgEAoFAIBAI3o8YzvYGBJMJ5T9FCSDv72jH5x7BYDKTVVSSnIWbdsHhpyi2lnDamU3r8aOs/uAtyZk7Cr0tZwj4/ZitqaTnF0w6HxgYwFOnhkunrEyGAKUFkcfeCQ9UEWrOmrVqV7yBfmwZmRQvrEmK82kilYvTuN93PxWDlXwi4xpyc7IIdCylbm832588yW1fX4WUgBMj/UM30fXII7hra3EfO4Zl4cKYrltemoFBJ9HhcNM6MEJJpjWm63xdXbR88Uu4a2uRjEYKH/gv0m+8EYC0a65Wu+J1d2PIzcW6etWo80lDEwu7gp3wwuSDaeRXzuH422/Oag6Ut6EB99Gj2NZdHvN1oQ54JSVIBsOYErxRAWrY6w81IlgdpwCV9A54Wv5TqS0p88VDaaZabtvcn3wHVG3rIH//+F46HR5ybCZ+/unVoaytaxcVsKehj64hN3lpatmdcD4JBAKBQCAQCATTQwhQ5yC1reqNZ7QAcq3bV255BbqJN+2JIAfglX8BoHj5ZbCljdYTR1EUJWwoeDIJZVlVVIVdazjYtc1UWYkhKwn5K6ESvPicK6CW45XWLJ3+HqbgzVPPo0gKC3IG+dgnvwKAa9BD43t9dDU6OP5OBwsvjd+NYcjKIu3qqxnavJmBp5+h4N//LabrrCYDNcXpvNs8wL7G/pgEKPeJkzR//vP429vRZ2RQ8pMfY129OnRe0utJXXtR9Em0TnjuAXB2QtpkgVJDK9+cDQcUqAKU4+WX486BGtcBTw7AUId6YkwI+aEzAwRkhaJ0C8UZ8WWeDfUm2QHVPPsB5BozlQG15UgHd//pECO+ANV5Nn71mTWhtQD0OolL5mQndU2BQCAQCAQCgeD9jijBOwfRAshrYsh/ipSZFDcHHoeOw2BOJ+/W+zEYTYw4Bulvb0vO/FHonCJMfeSAmv+UkozyOxgt6xo4Ax5ncuZMMtsdqsB4RfEVoWOp6WZWf6ACgF3PncYzklhreq0Mb/DFF5HdsbeUX1MeLMNrnDqI3Ll9O02f+AT+9nZMFRVUPPmnceJTzBgt/3979x0eR3nu//89W7Sr3rtVbbn3iiuYYtNrAiGEEE4IKeScJD5JCJz8AnwTSkJCyDlJaCkQIKGEXmLA2ODeC5bcZFvN6r2tyu7O/P4Y7UqypNWutLuSyf26Li7Q7jMzz0gjx3vnfj4PxObo/13juWCYlJMLQEttNR1to9utzxsjDSLvtwNeey1oTr3IFtG7JLE3/8n3gqurAyoyfvQFKE3T3B1QCWNcgPJ16edgNE3jT1tO880X9tFhd7IyL4HXvrOsX/FJCCGEEEIIERhSgBpnuhxOTlTrH/i82QHPLwHktgb4+Of6f6++F1NMKimTJgNQfrxg9OcfxnD34tcAcoDweAjv+XBe510QeTBVVuzjpEHFoGmsmHN7v/fmXJhBTHIYHS3d7H2vaETnD1+2FHNaGmpLC60ffeT1ca5iyN5hgsgbXnyRsm99G7W9nbDFi8l+6R96sWWk3B1rnpdMWsMj3Es4g7EMz7V80V5WhrO52evj+nVAtZTrL0Ykg7G3IdW12+AiHwPIoTcDyh9L8NqbuulotaMYFBLSg78Ez9X91d7tpKG9e1TncjhVfvpmPr947yiaBl9ekslfvraIKKv3OwwKIYQQQgghRk4KUONMYXUbdqdGTJh5yKU3mqb1LlvzRwHqk4eho0HvDFr0dQDSp+rdHeXHRrbNvLdU1UlNiStMfWA3l9rVRefhw4CfAshdRpgDFQybDz8HwGxCiHF1//QwmgysuDEPgM82nqGxqt3n8ysGA9FfuAGAple9DyN3BZEfr26l2WYf8L7mdFL10ENU//wXoKpEX3cdmX96BmNMjM9z7Mf9sxp+yWRytv77EIwClDE6GvMEPX+t86j3z5E7Ayo7C1p68p/6LL9zOFX2l/ihA8oPBSjX8rvYlDBMIf7POhuO1WwkpWcjhrLGkQeRt3Tauf3ZPby4qxRFgZ9eMY0Hr52J2Sj/EyiEEEIIIUSwyN++x5l8dwB59JDZSy21NXS2t2EwmkjIyBzdBasLYM+f9P++7BEw6t0A6VP0AlTF8cAWoBorKnB0dWGyWIhNG7jrXmd+PprdjjEhAXPmKO+1Ly+7asbC5uo9AKyKmzXo+1kz4smenYCqamx5pXBES5NirrsODAZsu3e7O3KGkxBhITchHIB9pf2X4ant7Zy567s0/u15ABJ/8ANSH3oQJSTE57kN4MPPKpg74YGeAwXeL8PTHA66z5wBejqgBgkgP1bVSnu3k0iricnJvi1767K1092h5yVF+WEJnjuAfAyW37lkxPUEkY8wB6qswcYXntjOlsI6Qs1GnvzKAu5YOXjenBBCCCGEECJwpAA1zrjzn7xYfpeQmYXRNIrlI5oG/7obNBWmXQ25F7jfSp08FRSFxsoK2ps8L7kaDVeYelJW7qC7yfUuv5vv3w+Mrt3VxlkBqrOjkd1O/UP/qqk3Djlu+RcmYTAplB1poPizOp+vY05NJbxn57am1173+jhXF9SePsvw7FVVFH/lVto++QTFYiH98d+S8M07/ffzcnVA1R7Tn1kPXMs4g7kTHnhfgLKXl4PDgWK1YkpKgpaejLU+BShXxtaCrFifd15zdT9ZI6MwW60+HTuY3h3wxrAA1RN4XzqCAtSB0kau++M2TlS3kRRp4ZVvLmXtjKGD7IUQQgghhBCBIwWocca9A54XAeSjzn868iYUbwGTFdY+2O8ta3gEiRl6bk/Fcd93i/PWsAHk+/YBfl5+B71B5ONsCd7uw3+j06CQ7NSYPOmyIcfFJIUx92K9I2zrq4U47E6fr+UKI2968w00+8AldYPpzYHSiyQdBQUU33gTXUePYoyPJ+tvzxF16aU+z8Wj+Ek9O+E19+4YNwTXc9RYWU6Xzb87pw3G1yByd/5TVhaKwdBbgOqzBM+VsbVoBMvv3PlPfuh+Aqgbwx3wXFwB4Wcafft5vvdZJV96eid1bd1MS43ire8uZ9aEof9cFUIIIYQQQgSWFKDGEYdT5WhlTwEqfegPSu6uodHsgNdtgw9+qv/3ih9AzMDlbWlTZwCBDSL3FECuqSq2AwcACPVXALmLa1lX8/jaCW9z0QcArAxL1wsUHiy4NIvw6BBa6jo5uKHM52tFXnABxvh4nLV1tG3e7NUxrqLIobJm6j/4iJKv3IqjpgZL3iSyX36Z0DlzfJ7HsMxWiNN3uKPWczE0LDqGiPgEfWhPtlgguYLIu4uKcLYNn8flzn9yhbK39u+A0jTN3QG1MMv3AHJ/5j/ZWrppa+wCICEj+AHkLr074XmXAaVpGn/YdJK7/r6fLofKhVOTePVbS0mNHjxTTwghhBBCCBEcUoAaR07VttPlUImwmMgaYltwTdP80wG17XFoOQPRmbD8e4MOCXQQuaaqHjuguk6eRG1pQQkLwzptqn8vHhYH4Un6f9eOj53wNFVlS7teSFqVdcmw40OsJpbdoBch9/2rmLbGTp+up5jNxFx3LeB9GHl2fBgJ4WauOL6J6u9/D62jg/Dly8n6+98JmZDu0/V94kNofDCX4ZkSEjAlJ4Om0XV8+Ln12wEPekPIewpQZQ0d1LR2YTYqzMmI8Xk+rXU1+un8UIBydT/FJIcRYjUNMzpwMmL1wpE3S/C6HSo//udnPPqB/jv9tWXZPPPVhURYxm7+QgghhBBCCJ0UoMYRVwD59LQoDENkv7Q3NmBrbkIxGEjIyh7ZhRqLYevj+n+v/QWYB+8McAWRVxedwt7pW3HDG8011XR32DCaTMRPGNiB1bFfz38KnTMbxRSAD5BJrmyhwC0x9MWpog1UGCFE01gy52teHZO3KJnUidE4ulW2v3bS52tG36Dvhte2eTP26urhD3A4+PGRt7gz/x0UTSPmSzeR8dSTGCMDvETLHUQ+/M8qKXuMgsgLhi/Udhf36YDStD5L8PQClKv7aVZ6NFaz77vOBWIHvMQx7H4CyIzXi/EVTR041aEzwJps3Xz1L7t4dd8ZDAo8cPUM7r96hs85WkIIIYQQQojAkALUOOIKIPcm/yk+PQNziGVkF/rwp+DsgpxVevj4EKISEolMSERTVSpP+r9LqNodpp6DcZACU28AuZ+X37m4c6DGRwFq85GXAFikhBMWluDVMYqisPKmyaBA4d4aKgp9C4y35OQQtnAhqCrNb7zhcayztZWyb32bWQc2oqKw6cIvk3LffYEpDp7Nlw6o3PEbRO7ugMrJhq4WsPcs24vSM6D2lugFqJHkPwG01vdkQPmjANUTQJ4whvlPAMmRVkKMBhyqRmXz4Mvwiuvauf6P29l5uoHwECN/vm0Rty3LDu5EhRBCCCGEEB5JAWocKXAFkHuxA95Qod3DOrUJjr4DihEu/SUMs1OZqwsqEMvwXFlWQy0lDFgAuUtSn93VxoHN9Z8BsDJpoU/HJWZGMmOF3kGz+aVCVKfq0/ExX+wJI//na2jq4Md2nymn5Mtfpn3bNjSrlZ8vuY2nkpcMtymd/7g7oIbfCc/1u1F/pgx7l/87987mbRC52tWFvVJfcheSldW7/M4SDSHhQO/uggtHWIByd0D5IYTcvQPeGBegDAaFdA/L8PYUN3DdH7dxuq6dtGgr//z2MlZPTQr2NIUQQgghhBDDkALUOKGqGgWuDigPAeSjyn9y2mH9T/T/XvwNSJ4+7CHp7iBy/xegPOU/2SsrsVdUgNGIdXYAgq2htwNqHGRANTeXchC9WLJq1q0+H7/kmlwsYSbqy9s4srXCp2Mj16zBEBmJ/cwZbLt2DXi/49Ahim+6ia7Ck5iSksh4/nkOZc6hucPOydogBbjHT9KLpl0tvcvWhhARG09YdAyaplJXWhLwqbk6oLpOnUL1sFTVXloKmoYhMhJjXNyAAPKG9m5O1ujfzwUjCCBXnU7aGur1U46yA6qz3U5LnX4viRljW4CCPjvhnRVE/uaBcm55ZheNNjuz0qN5867lTEsduoAvhBBCCCGEGDvjugB1//33oyhKv3+mTvVzGPU4UVTfTnu3E6vZQG5C+JDjfO6AUp1QtAUO/xPW36N3kITFwwU/8epwVxB5xYljqE6nd9f0gqZpHnfAs/XkP1mnTsUYMfT3Y1QSp+j/bi6DrtbAXMNLOw79FaeikONUyJhwns/Hh0aEsPgqfae4nW+fprPN7vWxhtBQoq+6EoC6J5+i+d33aN+1G83ppGX9ekq+ehvO+nosU6eS/crLRM6aybzMGKA3syjgTBaI73lOhulYUxTF/fsRjBwoU3KyXlByOuk6ccL9uqpqlB9v5MSeKsqPN9LZJ/9JUZTeQlrP8rt9JXr306SkCOLCQ3yag6o6ObFrO5qqohgMhEaNrghTd0YvhEXGW7GGm0d1Ln9Ij7EC8PHRanacqsfhVPntRyf4/ssH6XaqrJ2RzMvfPI+kKOsYz1QIIYQQQggxlHG/NdCMGTPYsGGD+2tTMPJmxoArgHxaahQm4+B1QVtLszvjJSk7d/iTHnkb1t89sGNk+jUQ6l2HRcKETCxh4XTZ2qktKSI5d5JXxw2ntb6OjtYWPUw9M3vA+x09+U+hgVp+B/pOeBHJ0Fatd0FN8G3pmz9tLvsUgFVRXvxchzBzVRoFW8ppqGhn1zunOf/mKV4fa54wAQDbrl3uLihDRARqm16IiLjgAtJ/82sM4XoxcGF2HNtP1bO3uJFblmSNeM4+SZwCdSf0AtSkizwOTc6ZSPHBfe5lnoGkKArW6dNp37qVziNHCJ09m1MHatjyciHtTV3ucaFmlYkJc5iUnaG/4FqC1xNAvrfYlf/kW/dT4a7tbHz2adoa6gB9N8U//ec3uPBrd5K3ZNmI7mm8LL8DWJ9fybuf6d+rD45U88GRaqxmA512fbnoN8/P5e61U4fcuEEIIYQQQggxPozrDijQC04pKSnufxISvAtnPtcUVPTkP3kIIHd1DMWmphMSGub5hEfehle+Ovhypb1/1d/3gmIwkDZFX6rmz2V4rntJmJCJKWRgt4erAypgAeQu7nDrsQsidzq62dpdA8CqiVeO+DwGo0EPJAcKNpdTd8a7rq6WDz+k5tFfD3i9t/h0PhP+8Ht38Ql6iyRB64ACn0Ljg9kBBf13wjt1oIb1T+X3Kz4BdNiN5M/4BjWxM/UXzlqC5/peLszyPv+pcNd23n7sIXfxyaWtoY63H3uIwl3bR3I7vQWoMV5+tz6/km+/sJ/WTke/113Fp1uWZHLPZdOk+CSEEEIIIcQ5YNwXoAoLC0lLSyM3N5dbbrmF0tLSsZ5SQLg6oDwFkHvKTOpHdeqdT3gIa17/E32cFwIRRN57LwM7qpytrXQd13OZQufP89s1B9U33HqM5B97nUaDQoSqMW/ml0d1rglTYpk4PwlNgy0vF6INE9itOZ1UP/Swx2DvzmMDM7LmZcZiUOBMY8eQO5P5nQ+h8a5lnXWlJTgd3i9HHClXAarjyFG2vFw4xCi9SHKwNh1V1fotweu0Oznc82eAtzvgqaqTjc8+7XHMpueeRvXy97yvurKx74ByqhoPvHPE059ibDxWg1MNVhK+EEIIIYQQYjTG9Xq2JUuW8OyzzzJlyhQqKyt54IEHWLlyJfn5+URGDv7BqKuri66u3s6Dlha9s8hut2O3B/6D6EhomuYuQE1JCh9ynlWn9A+2CZnZHu9FKdmKyWNQswYt5ThOb0bLWjHs/JIn6Uu5yo8V0N3drefXjFLV6Z57yRp4L+1794KmYc7IgNjYgP7clLg8TIBafQTnGD0fnx5/HYClpljAPOr7XXxNFsWH66gobOL4rkomLhg6kNq2Zw+OqiqP53NUVdGyaxdhixa5X7MYYFpqJAUVrew6VccVs1JGNWevxOZhBrTaYzi6uz3u4BgaE4clPIKu9jaqik57t2R1FEyT9c6zqion7YldQw9UFGydCmXH6shsLkcBHGFJ7Cuuw+7USIq0kBJp8uoZOHMkf0Dn09la6+soOfwZE6bP9Ppe7F1OGqv13eZiUq1j9ufmrqIGKps972JY2dzJjpM1LMkZ2a6BQgghxLlsvH62EUKIoYzrAtRll13m/u/Zs2ezZMkSsrKyeOWVV/j6178+6DEPP/wwDzzwwIDXP/zwQ8LChlm2NkbqO6Gl04RR0Ti1fyslBwcfV3IkH4Cimjqq339/yPOlN+zAmzSjg1s+oLygZdhxqtMBBgPtTY28/erLmCNGv8tUWU831cnKasrPupf4Dz4gHqhLSqTAw336Q1xbIyuBrrKDfBjgaw3lk8ajYIYsxwTe99McwrNCaDlp4ZOXjnC0vB3DEL/pkQcPkurF+fZ99BGttbX9XotXDYCB1zYfRClTRz3n4SiqgysxYuhqZeNbL9AZEu9xvCEiCtrb2PjOm0RNDPDmBZrGxFArXUbv/ozZ/ulukutLsAJbD53i1QYVMJIW0sG//vUvr87RWuxdvtW2TzYSWex952hXoxG0MAwWlU+2bhj+gADZV6cAxmHHfbhlF/VHpQtKCCHEvx+bzTbWUxBCCJ+M6wLU2WJiYpg8eTInTw79weuee+5h3bp17q9bWlrIyMhgzZo1RI1yZ6hAWV9QDQcOMTU1iquvXDromK72dp76+zMAXHnjl7BGDL00RimJgpInhr3u3JVrmeNFBxTAq/t3UFl4jMmpyUxbudqrY4bS3tTIyb8/A4rCVTfdTIg1tN/7Z179J53ApKuuYsHll4/qWsPqXA6/+QWh9gYuv2glWIK75Ki2Np+ffgSKpnHTZT8lPn6yX87r6HbyyoP7aGvoItkwnUWXZw86zpaYSMU/Xhr2fAsuuaRfBxSAkl/F5pc/o45oLr988OfW35TyR6DuBBfNSkOb6DmIfGtzLfvfe5PkyHBWB/o5AsrfeIOW441ejV22Yj7W1/Ti7/LLbuSvr5UCdVy5ZBqXL/Uu1P3MkXxe375p2HHLL7jQpw6o/E/LqeU0E/ISuPTy870+zt/iixr4W+HeYcetWblEOqCEEEL8W3Kt9BBCiHPFOVWAamtr49SpU9x6661DjrFYLFgslgGvm81mzOax3058MMeq9bDnWekxQ86xqlzvYIhKTCYy1sOHLU2D0uGChxWISsOUuwoMw3cYAEyYNoPKwmNUnTzO7AvXeHXMUBrP6PcSl5pOeGT/oqDW3U3X4cMARC5eHPifmTkBIlOhtRJz4ynIWDT8MX60o+AFAGZqZlJSZvjtvGazmRVfzGP9U/l89nE5M1ZMIDoxdMC4qCVLqElJwVFdPXgOlKJgSk4maskSFGP/Z2XJRH1p3/HqVjqcEGUNwu9X0jSoO4Gp4SRMvdTj0NSJeQDUlRQF5Xc/dMZMYnb9FYuhmy51YLA+AJpGRJyVjLSeZXrGEAyRyewv+wyA8yYmej3XrFmziYhL8LgMLzI+gaxZszF4+XsO0FCu/7+pSVlRY/pn5tJJSaRGW6lq7hw0B0oBUqKtLJ2UhFFCyIUQQvwbGq+fbYQQYijjOoT8hz/8IZ9++inFxcVs376d6667DqPRyM033zzWU/Or/HL9/72YkT70Dniu0O5kTwHk9k54/Ruw+Vd9Xjz7g1nP15c+4nXxCSB9qv+CyD2FqXceOYLW1YUxJoaQnJxRX8sriXrGFbXB3wlvc9VOAFbGTvf7uXPnJjJhaixOh8q2fw4ejK0YjSTfe0/PF2c9Kz1fJ997z4DiE0BylJXMuDBUDQ6UNvlz6kNz7YTnxc/KFXBfW1KM6vQ9iNtXehC5Rkj3EP9vpKaBAituzMPQ3pO7FZnCiZo2WjsdhIcYmZrifQeewWDkwq/d6XHM6tvu9Kn4BFBbqhfEx3oHPKNB4b6r9N+LIf4U476rpkvxSQghhBBCiHPEuC5AnTlzhptvvpkpU6Zw4403Eh8fz86dO0lMHDpU+VzTN4B8ZtrQSwRrhtsBr70O/nYNHH4VDCa46ndw4/MQdVbCT1Qa3Pg3mH61T/NMm6x/8G8oL8PW0uzTsWer8VBMs+3bD0DoggV+CTv3iquoURPcnfC6u1rZ4dC/l6um3uD38yuKwoob81AMCkWH6ig9Uj/ouKg1a0j/3eOYkpP7vW5KTib9d48TtWbojreF2bEA7C1u8N/EPXEVC734WcWmpGK2huLo7qKh4kyAJ6YXoOoSZtNqSsBggLCo/l1QId3NLM+pYuK8pN4d8CLT3N+7+VmxmIy+/ZGct2QZl333vwe8HhmfwNXr7iVvyTKfzuewO2mobAfGdgc8l0tnpvLEV+aTEm3t93pKtJUnvjKfS2d6k2AmhBBCCCGEGA/G9RK8l14aPpvmXFfd0kV9ezdGg8K01KELUB47oGpPwN+/CI3FYImGG5+DiT05TVOvgJLt0FYNEcmQtcynzieX0Mgo4idkUn+mlIoTx5i0cInP5zj7XlwdKn3Z9usFqLD580d8fp8l9QRUB7kDau/h5+kwKCQ4Nabl+VYQ9FZ8WgSzLkjns41n2PpKITf9f7EYBylyRK1ZQ+RFF2Hbuw9HbS2mxETCFi4YtPOpr0XZcby+v5w9wSpAJbk6oI73dBQNXaRUDAaSsnMpP1ZATdEpEjK8y1YaKUPaBArzvgjA7MVRLP3qAioLm/j4b0dpre8kt+hdcm+6SR/sKkBFpbGnWM+NWpg1shwjc8+S4/DYOM6/9etExMSSPm2Gz51PAPXl7WiqhjXCTETswKXMY+HSmalcMj2F3UUN1LR2khRpZXFOnHQ+CSGEEEIIcY4Z1x1Q/w5c3U+TEiOwmgf/wGjv7HR3cAzogDr9Kfz5Yr34FJMFd3zUW3wCvdiUsxJmfUH/9wg+lLqkT3EtwysY8Tk62lppqa0GICknt997mqbRsW8fAGELgliAGqMOqC2n9d3OVoamYDAGrha8+MocrBFmGqtsHN40dCeQYjQSvmQx0VdeQfiSxcMWnwAW9XRAHSxrotsR+J3wiJuod/h1t0Lz8F1NroKtq+gZSIc2nqHTEoelq5GpURUYDArpU2KZsiQFgPq46YTkZOuDWyv1f0f1dkC5vpe+Or1fD+qect4Kpi0/n4wZvmU+9VVb2gro3U9B60D0gtGgsHRiPNfMTWfpxHgpPgkhhBBCCHEOkgLUGMuv0AtQM9I9LL8rKdLDi2PjCI/p8yH1wAvwwvXQ2QwTFsMdH/cuUQoAdw7U8ZHnQLmW30Unp2ANj+j3XndREc6mJhSLpSdPJ0hc37PWCuhoCtplN7cVA7Aqw/NubqNlCTOz9Fq9ELPn3SJsLd1+O/fExAhiw8x02lUKKka3NNMrphCI7+mcqx2+YOgq2NYEuADV2tDJvn+VADDp1Bs4+vyOTMjSl+I1xE3DmD5Bf7GnA6rZnEBFcydGg8LczBifr6upKkUH9gCQM3/0Afq1ZT0FqDHOfxJCCCGEEEJ8/kgBaoy5Ashnpg0dQF5TdBLo0/2kqrDhfnjrLlAdMPMGuO0diAhsNparAFV96iT27q4RnaM3/2mQ5Xc93U+hs2ejhAyxi1gghMZAZJr+37XHg3LJ4uJPKTWCSdNYOvf2gF9v6rJUEjMj6e50svNN/xVjFEVhQc/Ssb09S8kCLrFnyWTN8EsmXR1QNcWn0NTAdWhtf/0kDrtKYqyDpJp9dB7pLUDFqrWYu1txmkKpLu8p/vV0QJ3o0As9M9OiCAvxvQuupvg07U2NmC1WJkybOer7qOvTASWEEEIIIYQQ/iQFqDHm6hqZ6cUOeEk5k8DeAf/8Gmz9rf7mqh/D9X8Cs3XI4/0lKjGZiNg4VKeD6pOD76o2HE874HW4A8iDuPzOxZ0DFZxleJuPvAjAAiWU8IiUgF/PYFBYedNkAI5ur6S6aIid2kbAtXQs+DlQw/+s4tIzMJlD6O7ooKm6MiDTKT/RyMm9NSgKLL88DQXoPHrUXfDqLikhvkFftlpyuE4/qKUcgAONoQAszB5Z/tPp/Xr3U9bsuZhGuRWz06lSV96zA15mxDCjhRBCCCGEEMI3UoAaQ3VtXVQ2dwIw3Ysd8JJTE+DZK+DIW2Aww7VPwoX/A4bg/BgVRSFt6gxg5MvwPO+A58p/WjDCGY5CovdFDX/YXHsAgFWJ84JyPYDUidHuPKItr5xAUzW/nNdVPNlb0oim+eecHiV6Xyw0GI0kZuUAgcmBUp0qW17Wi7EzVqaTtnQqisWC2taGvawM6ClA1fcUoPLr9fD01ioAtlXrnX4jzn9yLb+bN/rld42V7agOjZBQE1EJoaM+nxBCCCGEEEL0JQWoMVRQoXeh5CaEE2EZfPmNo7ub+jOlACRtuxvK90FoLHz1LZh7c9Dm6jKaIPIum43GSr3z4+wOKHt1jf6BXVEInTt31PP0mSsHyotlXaPV3lbFPq0DgFXTbwn49fpaet1EzBYj1UUtHN9V5ZdzzkyPwmIy0NDezem6dr+c06Ozd8IbbngAc6AKtlRQX96GJczEkqtzUUwmLFP0Z8m1DK+7uJi4xqMoaDRW2WguqwCnvhRvR51egFowgh3wbM1NVJ3Si1+58xaO+l7cAeQZEeMqgFwIIYQQQgjx+SAFqDHk2gFvhofld3VlJahOJ6FGB5EdRfouYHd8DNnLgzXNflw5UBUnjqGqTp+OrS05DUBkfCJhUf3vueOAvvzOMmUKxsgxyJ/xYVnXaO04+FccikKmE7Kzzw/49foKj7Gw8PJsALa/cYruDseoz2kxGZmTEQPg3tEtoOJy9Q7A7jZoLht2eFKAdsLrbLOz6239mV5ydS7WCH0JnHW6/iy5C1AlJZgdHSQl6kWdkv09nVGWeLo1EzkJ4SRGWny+ftHBfaBpJGVPJCIuftT3U1uqL79LkPwnIYQQQgghRABIAWoMufKfZnnaAW/TcwAkWVtRslfAHRsgfuDytWBJzMwmJDSULls79WWlPh1b4yH/ydaT/xQ2fwzyn6DPTniVAd8Jb3PZxwCsisgO6HWGMufCDKKTQulo6WbP+8V+OWdvDlQQgsiN5t6d8GqGLxgm9+mA8ucSwV1vn6bL5iA+PYIZK9Pcr7t2cOwsOIKmaXQX67vjZU3Xv0clR/VCT6MxAYCFWSNcfteT/5Q7f/TdT9C3A0oKUEIIIYQQQgj/kwLUGPK4A57qhPX3Ur3nXwAkZ2bCrW9A2MjCiv3FYDSSmqdn8JQf8y0Hqvq0vpvfYPlPHa4d8MYigBzAGg1R6fp/B7ALSnU62NKhL31bmXtZwK7jidFsYMUX8wD47OMyGqtGv2zOnQMVtCByVw7U8Esm4zOyMBhNdLa10lpX65fL15a1UrBFX0668qY8DMbeP0qt0/WctM4jR3DU1KLZbGAwkLtMz6IqP6NgVy2cccYAsGgEAeROh4PiQ3rR1h/5T6qqUXdGdsATQgghhBBCBI4UoMZIs81OaYMNgBlnF6C62uDlr8DOP1DTqe9GlbT2O2AKCfY0B+VahudrEPlQO+A529rpPKYXfcYkgNzFFW4dwByoo4VvU2dUCFU1Fs66NWDXGU72rASyZsWjqhpbXykcdWfQ/MxYFAWK623UtHb6aZYeuELjveiAMpnNJGRkAVBddHLUl9Y0jS0vn0DTYNLCJNIn9+9gskzOA5MJZ1MTtp07ADCnpxOXGU1kvBWnU+FM92yOd+iFnkU5vhegKo4fobvDRmhkFCmT8kZ9T03VNhzdKqYQAzHJYaM+nxBCCCGEEEKcTQpQY6SgUl9+lxEXSnRYn+3TWyrgr5fB8fdxGqzU2mMASM6ZNAazHFz6lJ6d8HzogLJ3ddJQfgYY2AHVceggqCrmtDTMKSl+m6fPgpADtfnYawAsNUUTYhnbTpMVX8jDYFIoPdJA8eH6UZ0rOtTMlGT9fvYFYxmeDx1Q4N8g8pN7a6g82YzJbGDZ9QN/Lw0hIVjy9KJQy/t6B2NIdjaKopA9U89qKu5aQIUzloSIELLjfS/4nD6wF4CcuQswGIwjvRU31/K7hAmRGAwSQC6EEEIIIYTwPylAjZGCwZbfVR6CZy6Eqs8gLIGGtX/C6XRiCQsnOnkMCzNnSZ00GYPRSGt9LS11NV4dU1tSjKaphEXHEB7bv+Ojoyf/KXQsu5+gtwMqgAWoLY160W5VynkBu4a3YpLDmHtRJgBbXzmBw+5bqPzZXEvJgpID5eqAqj0Bqjrs8GQ/BZHbu5xse03volpwWRaRcdZBx7mCyNu2bQMgJEvvwMqapec+lXYtoFqLZWFW3Ih2nHPlP+XMH/3yO9CXFIIsvxNCCCGEEEIEjhSgxkh+TwD5TNcOeMf/BX+5TA/BTpgC3/iY6o5QAJKyc8fVtuhmq9XdUVJ+tMCrY1ydJ8k5Ewfci21/TwD5WOU/ubiX4AWmAFVfd4J8xQ7Aytm3B+QavlpwWRbh0SG01HVy6OPhd5TzZGFPEPnekiDthGcMAXu7TzvhjbYDat/6YtqbuohKsDL3kswhx7mCyHHouwyGZGcDkD45BpPSTZuaQItjgvt75ovmmioaystQDAay5/jnd6bOFUCeGeGX8wkhhBBCCCHE2aQAFWROh4OCbe8RWfgm5xmOMC0xFHb8Ef5xs/5hOvcC+PqHEJvtcdc4r6+nOtlTtYf3T7/Pnqo9ONXRdbm4pE/xLQeqN/+p/5IlzW6n49AhAEJHsAOeX+/PtRNeWxV0+L+LZ+tnf0FTFKapRpKSZ/r9/CMRYjWxtGcZ2Z73iji5r5oTe6ooP96IqvqWC+XqgCqoaKG9y+H3ufZjNEF8T/aRFx1riVnZgEJ7UyMHP3yPsoLPUH18VpprbRz4SN/5cfkX8jCZh1765i5A9VA7O9GcTkwhRtKt+u+MsTt1RAHkru6n9CnTsYaPvmCkqVrvDnjSASWEEEIIIYQIENNYT+DfyYEPniNtxwPMoJ5fAISA7Z+PAl36gPm3wRW/0beZp7doM9iucd7YULKBR3Y/QrWt2v1aclgyP1n8Ey7OungUd6IHke97702vc6BqhriXzmPH0Do6MERFYZnkW86V3+/PGgVRE6DljN4FlbXU93N4sLlCX461MmaKX887WpMXJ7P3/WKaqm188ExvR1t4jIWVN+UxcV6SV+dJiwklPSaU8qYODpQ2sSIvIVBT1iVOgZoCPTR+8lqPQ4sP7sdgNKA6nXz85ycAiIhL4MKv3UnekmVeXW7bP0+iOjQypsWSM8fzvdnPlPf7uvbXv6bxhRdI/vE6ss07KemYS4IjhulpUV5duy93/tO8hT4fO5iW+g66O50YTAqxqeF+OacQQgghhBBCnE06oILkwAfPMWf7f5Go9Q97DqMLTYMzmdfAVb9zF59U1Ult8WlgYNeQNzaUbGDdJ+v6FWcAamw1rPtkHRtKNozwTnTpU/Ug8rqyEjrb2jyOddjt1JWVAAO7uWz79gEQNm8eisH7xzFg9+djuLW37HYb2+16V9WqvOv8eu7ROn2wlqZq24DX25u6WP9UPqcOeJfzBb3L8PYUB2EZnpeh8YW7tvP2Yw+hOvt3PLU11PH2Yw9RuGv7sJcqLain6FAdBoPCihsne1wS2/Lhh1T8+McDXndUV1O+7sfE1+fr03eYcHb41oVl7+ykrOAzAHL9lf9Uqv/+JqRHYDTK/yQIIYQQQgghAkM+bQSB0+EgbccDAAy1wZSpdCvOPh+QGysrsHd1YrJYiE1L8+16qpNHdj+CxsAlVK7Xfrn7l6NarhYWFU1s2gQAKk54LtbUl5WgOh1YwyOISuzfTTOSAPKA3l+AcqAO5v+DNoNCrKoxc+r1fj33aKiqxpaXCz2O2fpKodfL8Rb2LCkLSg6U+2c19POnqk42Pvu0x9Nseu5pj8vxnA6VLa/o36NZF04gzkOXkOZ0Uv3Qw6AN8v3qea3tgJ0IYzkKUFLg2+6DpQWHcNrtRCUmET9h6AwqX7h3wJPld0IIIYQQQogAkgJUEBzb9QHJ1A9ZfFIUSKGeY7s+cL/mzn/KyvV5m/X9NfsHdAb1paFRZatif81+n857NncO1DHPQeTVfbKs+naOaJrWG0C+0PsCVEDvz91V498OqM2n3gVgRUgSRlOIX889GpWFTbQ3dXkc09bYRWVhk1fnW9TTAXWgtAm7c/jd6UbF9bOqG3onvPKjBbQ11Hk8TWt9nccw/cOfnKGp2kZopJlFV+R4PJdt7z4cVVUexzhsJiIcJwAoyfetAOXe/W7eIr9tTODeAS9DClBCCCGEEEKIwJECVBB0NJYPP+iscdWjCCCvtdX6ddxQ0qd6F0Q+VJi6vaQEZ309SkgI1pneh3IH9P4SXQWo474f68HmFv17sCrjfL+ed7TaWzwXn3wdNzkpkkirCVu3k6OVLaOZ2vBic3p2wrNBU8mgQ9qavAuTH2pce3MXu98tAmDpdROxhHqOzXPUevfMmbv1c5YW1KN6WajTNM2d/5Q73z/5T5rWG0CelCUFKCGEEEIIIUTgSAEqCEJj030eN1RotzdiLDFejUsMS/T53H25ClBVJ0/g6O4ectxQ92LrWX5nnTULQ4j3XUHezntE95c4Wf93WzXY/LOM7MyZnZw2ahg1jWVz/sMv5/SX8CiLX8cZDAoLs1w5UP7fSbAfowkSen5eQxQMI2JivTrVUON2vnUae6eTpKxIpp6XOux5TInePXPGyC4s4Sa6bA6qirwr1NWVFtNWX4cpxELGjNleHTOctsYuOtvsGAwKcWkSQC6EEEIIIYQIHClABcHUJWupJp6hYnRUDaqIZ+oSfScvTdOG7BoaTlNnE08eetLjGAWFlLAU5ifN9+ncZ4tJTiUsOganw0H16ZODjlGdTmpL9G6Ps8PUbft7Asjn+zaP+UnzSQ5LHvL9Ud2fJRKiM/T/Hibc2lub858HYC5WolznHidS82IIj/FcXIqItZCaF+P1Od05UMEIIk/0HBqfPm0GEXGed6yLjE8gfdqMAa9XF7VwbHslACu/NBllqDW0fYQtXIApJUVfVzsIDTCFOWDWDDKnxwNQcti7ZXiu5XeZM2djDvGuIDgcV/dTbFo4JrNvS32FEEIIIYQQwhdSgAoCo8lExdL7AAYUoVxfVy69D6NJX97TXFNNl60do8nkU9BwcXMxt7x/CwdqD2A1WgG9GDOYuxffjdHHbKmzKYoy7DK8hvIyHPZuzNZQYlP6d5D0BpD7VigyGozcvejuId/X0EZ3f16EW/tic7W+bGpVvH+6VvzJYFBYeVOexzErbszD4EXxxWVRTwFqT3Ej2mBh3P6U5Dk03mAwcuHX7vR4itW33TkgZ01TNTa/rOc0TV2aQkpOtFfTUYxGku+9p+eLs75niv7bmDyvheSMiWTP6ilA5XvOqHJxLb/Lmeef3e+gT/6TBJALIYQQQgghAkwKUEEyb+1tHFr2v9Qq8f1er1HiObTsf5m39rbe14r0bqKEzBx3UWo4e6r2cMv7t1DaWkp6RDovXfkSv73gtySFJQ0Y+43Z3+DirItHcTe90qfonSNDBZG7s6yyc1EMvY+bo76e7uJiAMLmzfP5uknhA+/LJSokimVpy3w+Z+/JXV01o++Astnq2KO1A7Bq+pdGfb5AmDgviUu/OXPQTqgFl2Uxcd7Q3+vBzJ4QTYjRQF1bFyX1Nn9Nc3DDdEAB5C1ZxtXr7h3QCaUYDFz1g5+Qt2Tgs3JsZxU1xS2YrUbOu9a3LsSoNWtI/93jmJL7d+kZk5IJX95FVEYnObmTyJwRj6JAfXk7rQ2dHs/Z0dpC5Qn9efRX/hNAXakEkAshhBBCCCGCw7vqhvCLeWtvw3nRLRTs+oCOxnJCY9OZumQtKWcVmap9zH966+Rb3L/jfhyqg9mJs/nd6t+REJrAxJiJrM5Yzf6a/dTaavmo5CM2lG6gqLnIb/fk6oCqOH4UTVX7FZnAQ/5Tz+53lrw8jNHedZf09Xrh6wBclXsV1+VdR62tlmhLND/f8XPK28t55vAzfG/+93w+L9AbRO6HDqjdnz1Ht6KQ5oSJOf4p+gXCxHlJ5MxJ1HfFa+ni5L4aig7W0VTlewHJajYya0I0+0oa2VPcQHZCALOF3KHxPTvhGQavqectWcbERUsoP1pAc10NG//8JPauTkLCBs6tq8PBjjf153bRFTmER/u+3C1qzRoiL7pI3xWvthZTYiJ7I9JY8Yoeth+fkg3hZlJyo6k81UxJfj0zVw2dFVd8aD+appKQkUVUgm8FQU9cS/CkA0oIIYQQQggRaFKACjKjycSM5Vd4HOPKUxou/0nVVH5/4Pc8c/gZANZmr+UXy3+B1WTtvZ7ByKIUfcnOxJiJbCjdwKbSTdR31BMfGj/oeX2RlJ2L2WKls72N+vIyEjKy+t/LEFlWI11+B9Bub+dfRf8C4AuTv8D85N5z3L34bv5r03/xXMFzXDfpOjKjvF/C6ObHDqjNxR8BsDI8Y0BxbrwxGBTSp+hh3HGpERQdrKPoUB22lm7CorwPiQdYmB3LvpJG9hY38sWFAcy9issBowUcHdBUDHG5Qw41GIxkzJhNBlB9qpCDH7zH4Y0fkj27fwfenveK6GjpJiY5jNmrJ4x4aorRSPiSxe6vj72zmfMVDSdGjBF6ESlrVrxegDpc57EA5cp/ypnvv+V37c1dtDd3gwIJEyL8dl4hhBBCCCGEGMz4/kT8b6hvALmnDqhORyd3b77bXXz6xqxv8KtVv+pXfDrblLgpzEqYhUNz8M6pd/wyX4PRSGreFADKj/XPgdJUlZri08DQHVBhCxb4fM31RevpcHSQHZXNvKT+xYMLMi5gedpy7KqdR/c86vO5AUjQ74f2Wmj3LiB6MJqqstl2BoBV2WtHfJ6xkDAhgqTsKFRV4/jOKp+PX5TVkwNVEuAgcoOxdye8IXKgBjPrQv3ncXL3Dmwtze7XGyrbObxR/5mtuDEPo8l/f0SWlei/153WBH3eQNZMfVngmWONOLqdgx6nqk6KD+m/L7nz/Lj8rqwNgNjkMMwWCSAXQgghhBBCBJYUoMaZ1vo6OlpbUAwGEjKzBx1T31HP1z/8OuuL12MymPjF8l/wX/P/C4My/I/z+rzrAXit8DW/BUQPFUTeWFWJvbMDkzmEuPTeLhjVZqPziD7W1x3woHf53Q15N6CcFfSsKAo/XvxjTIqJT858wpYzW3w+P5YIiOnpnBpFF9SJU/+i2qhgVTUWz/7qiM8zVqYv10Pjj2yr8PlZWZCld1Kdrm2nvq3L73PrZwQda0nZuSTnTkJ1Oji6ZROgF3+3vlqIqmpkz04ga8boOwRduh0qzdWlABij09yvx6eHExFrwWFXKT/RNOixlSeO09nWijU8grTJ0/w2J1l+J4QQQgghhAgmKUCNM67up4QJmZhCBi57OtV0ilvev4XPaj8jKiSKpy95mmsmXeP1+S/LuYxQUyjFLcUcqDnglzn3BpH3L0C5wtQTs3IwGHs7LDo+OwwOB6aUFExpafjiROMJPqv7DJNi4qqJVw06Jjc6l1um3QLAr/b8CrvT7tM19Em7soVGngO15egrACw2RmINjR3xecZK3qJkTBYjTdU2Kk81D39AH7HhIeQl6cu69pY0BmJ6vRJHtmRy1oVrAPjs4w/QNI2iQ3WUHWnAYFJY8cVJfp1iQUUzcareTWeJ6y3GKopC1sye3fAOD74b3ukD+vK77LkL+v0ejZbsgCeEEEIIIYQIJilAjTO9mUkDPwBvr9jOV97/CuVt5WRGZvLi5S+68528FW4O59LsSwG9C8ofUvMmoxgMtNRW01rf+yF6qPwn2/59gN79dHYH03DeKHwDgNWZqz1mWH1rzreIt8ZT3FLMi0df9OkaACT2LMPzYVnX2TY35AOwKtl/uT3BFGI1kbdAzyo6urXC5+MXZuvL8PYWB3gZXtLIQuOnLj8fU4iFhvIyyo4UsO2fhQDMuziT6MQwv05xb3EjqYr+fVCi+hdds2bpy/CK8+sH7TQr6sl/8ufyO+jTASU74AkhhBBCCCGCQApQ44yrayg5t3/R5p8n/sl3NnyHNnsb85Pm88LlL5AdnT2ia7iW4X1Y/CGt3a2jmi9ASGgYSdl6+HPfZXg1fg4g73J28c5pPbvKdQ9DiQiJ4PsLvg/AE4eeoNZW69O13EWNES7Ba2os4hD60rNVs24b0TnGg+kr9GLJyX01dHU4fDp2Ubbe9bWnOEgdUHUnQB08R2kwlrBwpixdAcCWv79JS10n4TEW5l+aNcyRvttT3EByTwGKyNR+702YEovRZKC1vpPGyv67DrbU1VJbWoyiGMie63te2lA62+201ncCkJAhAeRCCCGEEEKIwJMC1DhTc1YHlKqp/Gbvb3hgxwM4NSdX5l7JM2ueIdY68iVdcxLnMDF6Ip3OTvducqOVPqUnB6pnGd5QYeqaw0HHAX3pn68B5BtLN9Lc1UxKeApLU5cOO/7qiVczK2EWNoeNx/c/7tO13EUNH7tqXLYd+iuqojBJNZCa5r/CQbAl50QRmxqOw65SuKfap2MX9XRA5Zc30zFEwLZfxGaDyQqOTmgs9ulQVxh51cm9aFoXy26YSIjVv5uDaprG3pJGUugpxJ3VAWW2GEmfEgNAcX7/ZXhFB/YCkJo3hdDIKL/NybX8LioxFEuY2W/nFUIIIYQQQoihSAFqHGlvaqStsQEUhaSsHGx2Gz/Y9AOeLXgWgLvm3sVDKx4ixDgwG8oXiqL0CyP3h7ODyFtqa+hsb8NgNBGf0dtR0nXiBKrNhiEiAktenk/XcM31uknXYTQMn4VjUAzcs/geAN4+9TaHag95fzHXEjxbHbQPns3jyaflmwFYFeXfLKFgUxSlN4zcx2V4E2JDSY6y4FA1DpY1BWB2PQxGSOh5lnzsWEubMg1LeCLgICK6lLyFyX6f3um6dhrau0k19HRARQ3MPXPthldyuP+ui678p9z5/l3GKcvvhBBCCCGEEMEmBahxxNUxFJc2gUa1hds/uJ2NZRsxG8z8cuUv+dacb/mcmTSUqyZehclg4kj9EY7Wjzxo2yWtpwOqrqSYLlt7b5h6RhYmc2+Hhc21/G7ePBQfApXLWsvYVbkLBYVrJ13r9XGzEme5xz+862FUTfXuwJBwiOkpnPnYBeVwdLGtWy9arZp0tU/HjkdTzkvBYFSoLW11Fy68oShK8HKgEkeWA1V5sgmn2nOsesRvv1996feukar0dECdtQQPIHuWnmdWeaqZLpsemu/o7qY0Xy+a5vg5/6nOvQOeLL8TQgghhBBCBIcUoMYRV2h3aHoiX37vyxypP0KsJZY/r/0zl+de7tdrxVpjuSjzIgBeL3x91OeLiI0jJjkVTVOpPHFs+AByH/OfXOHjy9KWkRbh285535v/PSLMERTUF/DWybe8P3CEOVCfHXmFFoNClKoxZ/pNPh07HoVGhJA7NxGAo9t864Ja3FOA2hPonfCSfN8JT3WqbH6pEGPIdBTFSH3ZKWqKT/t9anuKG4miHUtPJthgHVBRCaHEpoShqRqlR/RiXdmRwzi6uoiITyAxK8evc6otawNkBzwhhBBCCCFE8EgBahxxdQ29176Zals1OdE5vHj5i8xLmheQ67mW4b13+j06HZ2jPl/fZXjuMPW++U+a1htAPt/7ApRDdbgLR8OFjw8mITSBb835FgCP73+clu4W7w5M9L2oAbC5UJ/rcnM8JrPVp2PHq+nL9aLJ8d3VOHzIc1rYE0S+v6QRpzpwhze/SfS9WHhkawX15W1YI6LInb8YgPxNH/l9anuLG0hxdT9ZY8AcOug41254Jfn6MrzTrt3v5i70a2dWd4eDpmo97FyW4AkhhBBCCCGCRQpQ48jpE/pym6qINpakLOH5y54nIyojYNc7L/U80sLTaLW38lHJ6D94u5bhnTlWMGgHlL28HEdNDZjNhM6a5fV5t5ZvpaajhlhLLKszVo9obl+e+mVyonNo6GzgyUNPeneQqwOqxscCVEshACvTV/p03Hg2YWoskXFWujscnDrg/Y6CU1OiiLCYaOtycKzKy8LfSLg6oOoKvdoJr7PNzs639W6nJVfnMnfNpQAc2bIRe3eX36ZV09pJcb2NVNcOeFHpQ47NnqkvwystqMfpVCnqyX/K8XP+U90ZvfspItZCaOTo8uSEEEIIIYQQwltSgAoyp+pkT9Ue3j/9Pnuq9uBUnThUBw9/8v9wNrUDsGzeWp645AmiLdGjvp7mdNK+azfN775H+67daM7eD+cGxcB1edcB/lmG5+6AOnYEW3MToBCf0VtA69inL78LnT4dQ+jgXSCDcYWPXz3xaszGke3YZTaa+cminwDwj6P/4FTTqeEPcgWR13qfK1RZuZ9Cg4qiaayYc/tIpjouKQaFaSMIIzcaFOZn6V1Qe4sDuAwvJgtMoR53wlNVjfLjjZzYU8XHzx+lq91BfHo4M1amkTl7LpEJiXS1t3Ny9w6/TMmpavxjVykA08L1og9RA/OfXFImRRMSaqKj1c7JPcdorqnGaDaTNXOOX+bj4g4gl+V3QgghhBBCiCDy737jwqMNJRt4ZPcjVNt6t7NPCksi3hpP04ki1pKMITac+y/4hV+W3LR8+CHVDz2Mo6rK/ZopJYXke+8has0aAK6ddC1PHHqCvdV7KW4uJjs6e8TXqz9TCoqCprqCvjWeXXcXF37tTvKWLOsNIF+wwOtz1thq2HJmCzCy5Xd9LUtfxuqM1Wwq28Qjux/h6Uue9vx9TpgCKGCrh7ZaiEgc9hpbDj8HwGwthNi4icOMPrdMXZrKnneLqChsoqnaRkxymFfHLcqKZfOJWvYUN3DbsuzATM61E17VZ3oQeXz/7/2pAzVsebmQ9qb+3U0T5yVhMOp1+JkXXMKOf/6dwxs/ZNqKC0Y1nfX5lTzwzhEqm/WlrSG2ajBDmSOGoXoajUYDGdPiOLW/hvxPtgGQMX0WZqt/l3HWlkkBSgghhBBCCBF80gEVJBtKNrDuk3X9ik+gF1iONhwlsVX/kDlpyjy/FZ/Kv/f9fsUnAEd1NeXf+z4tH34IQEp4CsvTlgPwxsk3Rny9wl3beeexh0Hrn/PT1lDH2489ROGu7SMKIH/71Ns4NSfzkuaRG5M74vm5/GjRjwgxhLCzcicbyzZ6HhwSBrE9O+F52QW1uWo3AKviZ4xmmuNSZJyVzBn6MrGj273vgnLthLenuAFNC2AOlDs0vv/P6tSBGtY/lT+g+ASw+90iTh2oAWDm6otBUSgr+IzGKt/C1vtan1/Jt1/Y7y4+AaQoeq7TaydV1udXDnmseze8EwcByJnn3+V30KcDSvKfhBBCCCGEEEEkBaggcKpOHtn9CBpDf/hObtW7Sc7eNW4kNKeT6ocGFoP0N/XXqh962L0c74bJNwDw1sm3sKt2n6+nqk42Pvu0xzEb//okXSd7dvmb512ouqqp7qWBo+1+csmIzOC2GbcB8OieR4cPX0/0Pgeqs6OJXU79w/2qKV8c1TzHK1cY+dEdVTid6jCjdXMzYjAZFKpbujjT2BG4yblC4/v8rFRVY8vLhR4P2/pKIaqqEZWQRPYcvTg60jByp6rxwDtHBvymu0LIq7U4HnjnyJCB7Jkz4tG0LrraywDI9XP+k73bSWOlvtRXOqCEEEIIIYQQwSQFqCDYX7N/QOfT2SJ64nGS/VCAsu3dN6DzqR9Nw1FVhW2v3pG0asIq4q3x1HfWs/nMZp+vV360gLaGOo9j2hobaAi3EpKbiykuzqvz7q3aS1lrGeHmcNZkrfF5XkO5Y9YdJIUlUd5WznMFz3ke7Aq39qIDas/h5+k0KCQ5NabkXemHmY4/WbPjCY0009HSTcnheq+OCQ0xMjNdzzPbW9IQuMklDdwJr7KwadDOp77aGruoLGwCYNaF+nNW8MkGVKf3u/257C5q6Nf55OIqQFVqsVQ2d7K7aPDvQ1hUCJExNYBKeGwKMckpPs/Bk/ozbWgahEaFEBYtAeRCCCGEEEKI4JECVBDU2jzvGma2K0S36+Ha/uiActR6t0uZa5zZYOaaSdcAIwsjb2vyLly6y2zyafmdK3z88pzLCTN7lzfkjTBzGD9c+EMA/nT4T1S1eyjWuTqgao8Pe97NResBWBmahmL4fP5qGY0Gpi7tCSPf5v0ytUXZehD5nkAGkbs6oOpOgNMBQHuLdzvaucZNXLCY0Kho2psaOX1gr89TqGkdvKMuuWcXvGotzuM4AKOxBABL+CSfrz+cvsvv/LHUVwghhBBCCCG89fn8lDzOJIZ5Dq+ObdU7ESwxUYRFjX7nO1Pi8GHZZ49zLXHbWr7Vc0FmEBExsV6Ns9gdhM73LoC8uauZDSUbgN4lgv50afalzE+aT6ezk9/s/c3QA10dUDVHB1/S2ENTVba06zuercq62J9THXdcy/BK8+tpaxxmCWMPVw7U3uIAdkDFZIE5DJzd7p3wwqMsXh3qGmc0mZlx/kUAHN74gc9TSIocGBhuoZt4RS/8VPYUoAYbB/pz1Fytd3DZ2tNx2r1b5uit3gDyCL+eVwghhBBCCCGGIwWoIJifNJ/ksGQUBu84SGjWP/ymT5rml+uFLVyAKcXz0h1DZCShfbqRsqKyWJi8EFVTeevkWz5dL33aDCLiEjyOsdodxLV3et0B9e7pd+lWu5kaN5XpcdN9mo83FEXhniX3YFAMrC9ez56qPYMPjM8DFOhogPahO8tOF2+k3AhmTeO82V/z+3zHk5jkMNLyYtA0OLZj6EDtvhZm6UXKE9VtNNm6AzMxgwESJuv/3bNkMjUvhvAYz0WoiFgLqXkx7q9nrr4EgKL9e2kdZmnp2RbnxJFyVtErqWf5XZdmppkIUqOtLM4ZfBlq1elCOttaUBQLmpZCRc/SQH9xd0BJ/pMQQgghhBAiyKQAFQRGg5GfLP4JwIAilIJCXIu+/C4lxz9LbhSjkeQf/8jjGLW1lar770ez94aOu7qg3jj5BqrmfeeFwWDkwq/d6XHM9PI6TIkJmDOG2oS+l6Zp7uV31+ddH7ClQlPjpvLFyXpY+CO7H8GhOgYOCgmD2Gz9v2uGzoHafOQfACxSwgiLSPL3VMed6ctdy/Aq0YYI1O4rPsJCbmI4APtKArgML6l/aLzBoDBtmedi7Iob8zAYep+x+PQM0qdOR9NUjnw6zE6JZzEaFJbkxvd7LQX9fqu0WEDhvqumYzQM/kyf3q8XQqOTp6AoRorzfSuAeeK0qzRU9ASQyw54QgghhBBCiCCTAlSQXJx1MY9d8BhJYf2LE8lhycx0ZgH+yX9ysVf2dKaclUVkSkkh+vrrwWCg+Z+vUfqNO3E2NwNwSdYlRJojKW8rZ1flLp+ul7dkGVevu3dAJ1RkfAIXzFxISnM7YfMXeFVMKqgvoLCxEIvRwuU5l/s0D199d+53iQqJ4kTjCf554p+DDxok3Ppsm+sOAbAqybslhue63PlJhISaaK3v5Mxx7wpKi7L0rp/A5kBN0f/d0wHldKqc2t+TdWYx9hsaEWvh0m/OZOK8gQXDWReuBeDwpg/RVO+LsZXNHXxYoG84EBPaU1juyX9qMCbwxFfmc+nM1CGPdxWgcuYvBPA66N0bDZXtqE4NS5iJyPjBlwAKIYQQQgghRKCYxnoC/04uzrqY1Rmr2V+zn1pbLYlhicyKnsEfX/sS4J8d8ADsNTXU/eGPAKT8v/9HSEYGjtpaTImJhC1cgGI0EnnJxZT/9w+x7dxJ8c1fJuOpJ7FmZHBF7hW8dPwlXi98naVpS326bt6SZUxctETfFa+pkYiYWNKnzeDMt79DO3i9/M7V/XRJ1iVEW0afieVJjDWG/5z3nzy460H+78D/cWn2pcRYY/oPSpwKx98fsgOqpeUMB+gEFFbN/EpA5ztemEOMTF6cTP6n5RzZVkHGtOF3NlyYHcvLe8sCmwOV2L8D6vCmMzRW2QiNNHPz/efRcKaN9pYuwqP0ZXeGITqRJi9Zzsa/PkVzdRVlRw6TOXOOV5d/5F/H6LA7WZAVy8t3nsee4kYi9++HApgzYzoGD8WntsYGaopOATD/0lUc332Y5toOmqptxCSPPoS/7/I7CSAXQgghhBBCBJt0QAWZ0WBkUcoiLs+9nEUpi2g8U4amqYRFxxAeO/yHeG/U/uYxVJsN6+zZxFx/HeFLFhN95RWEL1mMYtS7QCJXryb7xRcwJSfTffo0xTfehG3/AXfg98elH9PY6XunisFgJGPGbKYtP5+MGbNRUOjYfwDAqwBym93G+6ffB3qXBAbaFyZ/gcmxk2npbuH3B38/cMAwHVDbD/0Vp6KQ7VTIyFgewJmOL64w8tMHa+loGz7XaVFPEPlnZ5rptDsDMylXaHx9IbZGG3veLQLgvGsnEhpuJn1KLJMXpZA+JXbI4hOA2Wpl2orzATi88UOvLr2nuIG3DlagKPDA1TMwGQ0snRjPzEgbAIaooYtPAEU9u+6lTMwjJjmBtJ5cquLD/lmG13cHPCGEEEIIIYQINilAjbHqno6H5JyJfulKsB04QPNbeoh4yk//B8Uw9I/YOm0a2a+8gnX6dJyNjZR+7Wukbj/F9Pjp2FU7755+d9Tz6So8idraihIWhnXqlGHHf1D8ATaHjczITBYmLxz19b1hMpi4Z/E9ALx64lWONZxVaEr0vBPelrJPAFgVmRPAWY4/iZmRJGZGojo0TuyqHnZ8VnwYCREWup0qh8ubAzOp6Ez3Tng7X/2M7k4nSVmRTFvqufgzGNcyvMJd2+hobfE41qlq3PdWAQBfWpTJzPQ+nXstFfq/I9M8nsO9/G7eIgCyZupZUiX5/lmG17sDnhSghBBCCCGEEMEnBagxVlN0EoAkPwSQa6pK9S8eBCD6+usJnT172GPMyUlkvfA8ERdeiNbdTcUPf8i398eDpvF64etogxRcfNGxfx8AYXPnoJiGX/H5euHrQGDDxwezMGUhl2VfhqqpPLzr4f73nTAZFAN0NkFbTb/jVKeDrV168WXVxCuCNt/xojeMvGLYZ0VRFBZl67vh7QnUMjyDARKnUN2dx9H9eufRypsmo3jodhpKUs5EErNzcTocHN36icexL+0p5UhlC1FWEz9cM7n/m64CVNTQBSiH3U7J4YMA5M7XC1DZs/Q8tYrCJro7BwnI94HqVKk70wZIAUoIIYQQQggxNqQANcb6dkCNVvPrr9NZUIAhIoKkdT/w+jhDWBgT/u9/ibv9dn0uf9/Ef72nUFxXyKHaQ6Oak23ffsC75Xenmk5xsPYgRsXINZOuGdV1R2LdwnWEmkLZX7Of9cXre98wWyG2p7uptn8OVP6x12kwKISrGvNn3BLE2Y4PeYuSMZkNNFS0U13kuUsIYGHPMry9AQwi1xKmsaX16wBMPS+FlNyR5YgpisKsC9cAcPjjD4YssDXZuvn1B8cBWHfJZOIjLP0HtPZsCOChAFV+tAB7Zwdh0THuPwtiksOITgxFdWqUHR1dwa6xyobTrmK2GIlODB3VuYQQQgghhBBiJKQANYacDjt1pSXA6HfAc7a0UPPYbwFIuOsuTAkJwxzRn2I0knz3j0m5/34wGllx2MFPX3Ly7oF/jGpeNlcHlBcB5K7up/MnnE9CqG/z94eU8BTumHUHAL/e+2tsdlvvm+5leP2X520+oc95mSkGsyU8KPMcTyxhZiYu0HeRO7K1Ytjxrg6ovcUNqOrouuuGcrztPKrtUzAbuznvutH9Xk1bfgEmcwh1ZSVUnTox6JjffnSCRpudyckRfOW8rP5vqmpvASrSw+53B1zL7xb2WzabNatnGd4od8NzLb9LyIgYUTeYEEIIIYQQQoyWFKDGUF1ZKarTgTU8gqjEgVvB+3SuP/wBZ0MDIbm5xN3y5RGfJ/ZLN5Hx1FNo4aFML4PlD7xD44mCEZ3LXlGBo6ISjMZhlwN2O7t559Q7AO4g9LFw24zbSI9Ip8ZWw58O/6n3DVe49VkdUJub9ILUyrRlwZriuOMKIy/cW013h+elYtNTowgLMdLS6aCwps3vc+nucLD94AQAFiV9THi0ZZgjPLNGRJB3nh4sP1gY+bGqFp7fqReR779KDx7vx1YHqgNQIDJlyOsU9RSgXMvvXLJn6oXYkvx6tFEU7PrugCeEEEIIIYQQY0EKUGPIteV60igDyLtOnqThhRcBSL73XpSQkFHNK2LFcnL/8RINMSZSGjTOfPlW2nfv9vk8tp7d76zTpmEI99wdtKlsE41djSSFJbFsDIs5FqOFHy/6MQDPFjxLWUuZ/kZiz054fTqgamsKOGrQd3NbOfv2oM5zPEmdFE1MchiObpXCvZ7DyE1GA/MyY4DA5EDtea+IDptCjLGc2fwNnPZRn9O1DO/Yts10d3a4X9c0jfvfLkDV4PJZKSybNEjXXku5/u+IJDCaBz1/Y2U5jZUVGIwmsmbN6/deWl4MJosRW0u3u4tpJKQAJYQQQgghhBhrUoAaQ9V9ClAjpWkaVQ8+CE4nERddRMSK5X6Zm3XyZIp+/S1OpIGprYPSr99B0xtv+nSOjhEsv7t20rWYDMOHlQfS6ozVLEtbhl218+jeR/UX+3ZA9WQBbfnsWQBmqEYSXAWqf0OKojDNHUZeOez4hVmuHCj/FqAaq9r5bOMZAFbEvohR64SG06M+74RpM4lJScXe2cHxHVvcr79/uIqdpxuwmAzce/kQP/8WL5bf7d/bc53pWMLC+r1nNBvImKovWxzpbniaqlFX1hNAniEFKCGEEEIIIcTYkALUGHLtgDeaAPLWDRuw7diJEhJC8k/u9tfUALhswZd48BYLO6YqYLdTec891Dz+OJqqenW8twHk5W3l7KjYAcB1k64b3aT9QFEU7l50NybFxKayTWwr3wbxeT074TVDaxUAmyv1Oa+K+fctPrlMPS8Vg0GhprjFvdvaUBb1BJHv8WMQuaZpbHmlEFXVyJ6dQFZml/5GzVHPB3pBDyNfC/Quw+vodvLge0cA+PYFE5kQGzb4wa3D74DXm/+0aND3XbvhFY8wB6q5tgN7lxOj2UBsyhDzFEIIIYQQQogAkwLUGFGdTmpLigFIypk0snN0dlLzyC8BiPuP2wnJyPDX9ACID41nxcQLefxaAyeumgVA/ZNPUfHDH6J2dno81tnSQtcJPbQ5bP48j2PfPPkmGhrnpZ7HhMgJ/pn8KOXG5PLlaXqW1iO7H8FuMEJcrv5m7TG6u9rY4WgCYNWU68doluNHWFQI2XP0QsnRbZ7DyOdmxmA0KJQ3dVDR1OFxrLeKP6uj7EgDBpPC8i9MgqSeomDtMc8HemnG+RehGAxUnjhGXVkJT3x6iormTtJjQvnW+R4KyC2eC1DdHTbOHMkHBuY/uWTN1IPIa0pasLV0+zx31/K7hAkRGM7OqBJCCCGEEEKIIJFPI2OkoeIMju4uzNZQYlOGXp7jSf1f/oK9vBxTSgoJd97p5xnqrs+7Hk1R+NX8chJ/8QCYzbS8/y9Kb/sajvqhOzI6Dh4ETcOclYkpMXHIcU7VyRuFbwBwQ97YhY8P5ltzvkWcNY7ilmL+fuzvvTvh1R5jX/4L2AwK8U6N6VPGvmtrPHCFkR/fVYXD7hxyXITFxPTUKAD2loy+C8phd7L11UIA5l6cSUxSWL+flT+Ex8QyccFiAHb8632e/FRfPvvTK6ZhNRuHPnCYJXglhw+iOh3EJKcSm5o+xLUtJGREgAalBb53Qbnzn2T5nRBCCCGEEGIMSQFqjLgDyLNz+2277i17RQX1Tz8DQPKPf4QhLDBLa5amLiUlPIWW7hZ2z48g809/whAdTcehQxTfeBNdJ08Oepxr+V3YMMvvtldsp9pWTbQlmgszL/T7/EcjMiSS78//PgBPHHqCuvhs/Y2ao2w+/T4AK6wpGIxjm1k1XmRMjyMi1kKXzcHpg7Uexy7M1nON/JEDdXBDGS11nYRHh7Dg0iz9xaSBofGj5VqGd3TzJhx2O8smxnPpzKF3tgOGXYLnyn/Kmb/Q40YEo1mG5wovlwByIYQQQgghxFiSAtQYcQWQjzT/qfrRR9E6OwlbuJDIyy7z59T6MRqM7lym1wtfJ3zJYrL/8Q/MmZnYy8sp/tLNtG3bNuC4jn3eBZC7wsevyr2KEOPodu8LhGsmXcPM+Jm029t5vLNUf7H2GFtaiwBYlXHB2E1unDEYFKYu6wkj3+o5jNxfOVBtjZ3s+1cxAMtumESItacY6OqAqj/pl53wALLnzMccFYvRbmNSRzH3XTVj+N0rPXRAaZpG0UG9AJU7RP6Ti2sZXtmRepxO7zLYXNeQHfCEEEIIIYQQ44EUoIJMVZ2UFXxG8UG9QJOYlePzOdp37ab1X+vBYCD5p/8z/IfgUbp20rUoKOyq2kVZSxmW3ByyX36J0AULUNvaKLvzmzS+8goAmtNJ27Zt2A4eBMA6Z+6Q563rqOOTsk8AfanfeGRQDNyz5B4A3mo4yEFLCO80FlBiBIOmsXjWLWM8w/Fl2rJUUKD8eCPNtbYhxy3M0jugjla28NKeUnacqsepaj5fb/vrp3B0q6ROjCZvUXLvG9ETICQCVDvUn/L5vINxonA0Qi9sXaQUMSVlmIKO6oSmnqJla5X+dR81Radob2zAbLEyYfosj6dKyo7CGmGmu9NJ1clmr+fcWt9Jl82BwagQlxru9XFCCCGEEEII4W9SgAqiwl3beeaur/PK/7uXhgp9u/gt/3iOwl3bvT6H5nBQ/eCDAMR+6SasU6cGZK59pUWksSxtGQBvnNTzmkyxsWT+9S9EXX0VOJ1U/ew+yr5zFycvvIiyr98BDgcAZd+4g5YPPxz0vO+cegeH5mB24mzyYvMCfh8jNTtxNtdMvAaA21OTuTdR795RFYUvvH4VG7Y+PJbTG1ei4kPJnKZ/f45uG7oLan9pI0aDXjj9yWuHufmZnaz45UbW53vunOqrorCJwj3VoMDKmyb3L8QqCiRO0f+7dvQ74QE8v6OEbQY9iN5UVUhzTdXQg4+8Db+dAY6ekPU3vwWPz9Rf7+Ha/S5z1lxMZrPHaxsMClkz9C6o4nzvl+G5lt/FpYVjNMsf90IIIYQQQoixI59IgqRw13befuwh2hrq+r1ua27i7cce8roI1fjyy3SdOIExOpqE//zPQEx1UK4OpTdPvolD1YtLhpAQ0n75SxL+87sAtG3ciKO6ut9xjuoayr/3/QFFKE3T3Mvvxlv4+GDmOw2gaTjO6jarMcC6ky9KEaqPaT1h5Ed3VKIOslxsfX4l335h/4COp6rmTr79wn6vilCqqrH5ZX2XxRkr0gZfXpbovxyourYufrvhBC3mKEIy9aJv/icbBh985G145avQetZ9tFTqr/cUoYp68p9y5y/0ag5Zs/QCVMnhumFG9pLld0IIIYQQQojxQgpQQaCqTjY++7THMZueexpVHXrnMABHYyO1//t/ACR+/3uYYmP9NsfhrM5YTawlltqOWraWb3W/rigKCd/6Fobo6MEP1PQiQ/VDD6M5e+9vf81+iluKCTOFcWn2pQGd+2g5Hd388dTrg76n9RSkfnniRZyO7mBOa9zKmZOANcKMrbmbkoL+IeNOVeOBd44w2GI712sPvHNk2OV4R7ZWUH+mDUuYiSXX5A4+KMm1E97oO6B+/cFxWjsdzEyP4uJrrwYgf9NHA39nVSesvxs83eH6n2BraqDylF5Ay5nnXQEqc3ocikGhscpGS12HV8fUlrYBsgOeEEIIIYQQYuxJASoIyo8WDOh8OltrfR3lRws8jqn93e9Qm5uxTJ1KzI03+nOKwzIbzVw9Uf/g/Vrha/3es+3dh9rsIZdG03BUVWHbu8/9kqv76bKcywgzB2YHP3/Zf/h5qo2KvqxrEJqiUGVU2H/4+SDPbHwymgxMPU/fHe7I1op+7+0uaqCyuXPIYzWgsrmT3UVD747X2W5n51t6rtPiq3IJjRgivN7VAVV73PvJD+KzM028vLcMgPuvmkHe4qVYI6Noa6in+ND+/oNLtkNLxSBncdGgpZyiDS+DppGYnUtkXIJX87CEmUmdqBd6vdkNTw8gbwGkA0oIIYQQQggx9qQAFQRtTd7t9OVpXOeRIzS9rAd9p/zPvShGo1/m5gvXMrwtZ7ZQY6txv+6orfXqeNe4lu4WPiz+sN85x7PallK/jvt34FqGV5JfT3tTl/v1mtahi099eRq3++3TdLU7iEsLZ+aqtKFPktRnJ7wRdqepqsb9bxegaXDdvHQWZsdhMpuZsWo1AIc/PivfrK16kLMMdLpALzYPt/vd2Vy74ZXkD78Mz9bcTUerHUWB+AkRPl1HCCGEEEIIIfxNClBBEBHj3VK5ocZpmkbVgw+BphF1+eWELfLtQ6u/5MbkMi9pHk7NydunesOUTYmJXh3vGvf+6ffpdHYyKWYSsxI87/41HiRGZfp13L+DuNRwUidGo6kax3b2ZiElRVq9On6ocXVn2sjfXA7oweMGo4c/wqLSwRIFqgMaRrYT3psHy9lf2kRYiJGfXNYb+D9z9RoATu/fTXvfwrFl+E4jp6ZQclr/nnib/+TiyoEqP96Evcvzkl1X/lNsajjmkOAXrIUQQgghhBCiLylABUH6tBlEDLPMJjI+gfRpMwZ9r+W99+nYtw8lNJSkH/0wEFP0misw/PXC11E1PWA6bOECTCkpQy5RQ1EwpaQQtnCB+1jXuZShjhlH5s+6lWSnhqINnkukaBopTo35s24N8szGN1cX1JFtlWg9mU6Lc+JIjbbi6aceFmJkQdbAYqymaWx5+QSaBhPnJzFhyjCF3b474dX4ngPV1uXg4X/pAeb/eWEeyVG9RbGEjCxSJ09FdTop+PRj/cXmM7Dh/w1zVoUKJZeuzi5CI6NImTTZpznFpYYTGWfF6VA5c9xzZ6VrBzzJfxJCCCGEEEKMB1KACgKDwciFX7vT45jVt92JwTCwS0Ftb6fm0UcBSPjmnZhTUwMyR29dknUJEeYIylrL2Ful7+KlGI0k33uPPuDsglLP18n33oNiNHKk/ghHG45iNpi5MvfKYE59xIymEH4y+RaAAUUo19d3T74Fo2mILKJ/U5MWJGG2Gmmp7aC8sAkAo0HhvqumAwxZhLJ1O/nWC/to63L0e/3kvhoqCpswmQ0su2Gid5NIdAWR+74T3v9tLKS2tYuchHD+Y0X2gPdnXah3QeVv+hCtfD88cxHU5OtdV8DAO9S/Ph2rh+5nz10w6O+8J4qieL0bnuyAJ4QQQgghhBhPpAAVJHlLlnH1unsHdEJFxidw9bp7yVuybNDj6p5+Bkd1NeYJE4i7/fZgTNWjMHMYl+dcDvQPI49as4b03z2OKTm533hTcjLpv3ucqDX6h3VX99PFmRcTY40JzqT94OIV9/DYpFtIUvu/nqzCY5Nu4eIV94zNxMYxs8XI5EX689A3jPzSmak88ZX5pET3X2aXGm3lGytzsJgMbDxWwxee2E5Fk77bm73LyfbXTgIw/9IsouJDvZuEqwDlYwfU6do2/rK1CICfXTkdi2lgoWjK0pWYraE0VlZQ/vuboK1KDz7/9ja48XmIOqtYHJUGN/6NotImAHK93P3ubL05UPVoQ3TlQd8ClOQ/CSGEEEIIIcaeaawn8O8kb8kyJi5aou+K19RIREws6dNmDNkF0V1aSsNf/gJA8j0/wWCxBHO6Q7p+8vW8cuIVNpRsoLmrmWiLvjNX1Jo1RF50Eba9+3DU1mJKTCRs4QJ3YHqHo4P3Tr/nPse55uIV97D6vP9m/+HnqW0pJTEqk/mzbpXOJw+mr0ijYEsFpw/U0tluxxpuBvQi1CXTU9hd1EBNaydJkVYW58RhNChcMTuNO57by7GqVq75wzb+fNtCOvY30NbYRWSclXmX+JC1lTSyDqifv3sEu1PjwqlJrJ6aNOiYEIuVqZPiOZx/hsP1MUxYOQu++FewRkNMJky9Qt8Vr60aIpIhaxnNdXXUn3kaxWAge84Cn+bkMmFKLCazgbbGLurL20kYJGC8o7WbtkY9/D1hgnRACSGEEEIIIcaeFKCCzGAwkjFjtldjqx/5JZrdTvjy5URceGGAZ+a96XHTmRo3lWMNx3j39LvcMu0W93uK0Uj4ksWDHvdRyUe02dtIj0hnccrgY8Y7oymERfO+PtbTOGckZkYSPyGC+jNtnNhdxezVGe73jAaFpRPjBxwzNyOGN+9axtef3cvx6lbu+OMOvtasd0st/+IkTL4EaidO0/9dfwocXWAavoi78Vg1m47XYjYq/H9XTh98kNMO7/+IWW3vcJh5nGhLYfU1f8Fqje4dYzBCzsp+h50+sAeAtMnTsEaMrDPJFGIkfWosJYfrKcmvG7QA5cp/ik4KJSRU/pgXQgghhBBCjD1ZgjdOtW3ZQtvGjWAy6flJ4yisW1EUrs/TO5heK3zN4zKgvl47oS/Zuz7vegyKPHr/DhRFYborjHxrhdfPyoTYMP757aWcPzmRpa0mNKeGkmwlZ47nMP8BotL0TCbNqRehhtHlcPL/3jkCwNdX5JKTED5wUGczvPhF2PdXUqztJCRE4nBqHNuxbdjzF+3XC1C580e3k2X2LP37UHK4ftD3Jf9JCCGEEEIIMd5IFWAc0rq7qX7oYQDivvIVLBO9DFwOostzLsditFDYWEhBfcGw44uai9hfsx+DYuCaidcEYYZivJi8OBmjyUB9eTs1Ja1eHxdpNfPA4lwm242oaPzZ1sT/vFmA3akOf7CLovQJIh8+B+ovW4sprreRFGnhuxdOGjigsQT+vAZObwJzOMqX/8GsK28G4PDGDz2e297VSVnBYWDk+U8urhyoqtPNdLbZB7xfW9oGyA54QgghhBBCiPFDClDjUMMLL9JdVIQxPp6Eu74z1tMZVLQlmkuyLgH6h5EP5Y3CNwBYmb6S5PDkYUaLzxNruJmJ8xMBOLKtYpjRvZxOle3/1IPHzVOjaTBp/GN3Kbf/dQ/NHQOLLkNy5UDVeM6Bqm7p5P82FgJwz+VTibCctXStbA/86SI9TyoyFf7jXzDlMqatXI3RbKam+BTVp08Oef7S/M9w2LuJSkwiPiPL+/kPIjLOSnx6OJoGpUcGdkG5luBJB5QQQgghhBBivJAC1DjjqK2l7g9/ACBp3TqMkeP3A6RrGd77p9/HZrcNOc7utPPWqbf6HSP+vbiW4RXurqa70+HVMfmflNNYZSM00sztd87hmVsXEhZiZOvJOr7wxHbKGoZ+5vpx5UAN0wH1yL+OYet2Mj8zhmvnpp81mdfhuSuhvRZSZsM3NkLqHABCIyLJW6zvYumpC6qoJ/8pZ94ivyypzZqpL8MrPmsZXpfNTkutvnugdEAJIYQQQgghxgspQI0zNY/9FrW9Hevs2URfd+1YT8ejhckLyYzMxOaw8UHxB0OO+/TMpzR0NpAQmsDKCSuHHCc+v9ImxxCdGIq9y8mp/TXDjre1dLP7ndMAnHftRCxhZi6enswr31xKcpSFwpo2rv3DNvaVNA5/cS86oPYWN/DGgXIUBR64emZvgUjTYPOv4Z+3g6MTJl8Gt/9Lz5bqY9aFawA4uvUT7F2dA86vaRqn9+8FIHf+6JbfuWTN0pfhlR6pR1V7s7XqyvTld5FxVqwRZr9cSwghhBBCCCFGSwpQ40jHwYM0v6EvVUv56f+gGMb3j6dvGPnrha8POc61RO+aiddgNsgH4n9HiqIwbXkqAEe2Vg47fuebp+judJKUFcm0panu12emR/PWXSuYkRZFfXs3Nz+zk3cODbOsz5UB1XBa3wnvLE5V4/539ByzLy3KYNaEnp3sHN3w5ndg48/1r8+7C770IlgG7jqXMX0W0ckpdHfYOLFzYBh5XVkJrfW1mEIsXu+COZyUnCgsYSa62h1Un252vy7L74QQQgghhBDj0fiucPwb0VSVql88CED09dcTOts/H1ID7ZpJ12BUjBysPcippoG7jFW1V7GtXP9Afl3edcGenhhHpi5NRTEoVJ1upqGifchx1UUtHN2uF6lW3jQZxdB/uVpKtJVXvrmUi6cl0+1Q+c9/HOD3GwuH3mEvMhUs0fpOeHWFA95+eU8Z+eUtRFpN/HDNFP1FWwM8fx0c+jsoRrjiN3DpQ2AwDnoJxWBg1mq9C2qwZXine3a/y5w5G3OIZch794XBaCBzht4FVZzfuwyvdwe8gYUyIYQQQgghhBgrUoAaJ5rfeIPO/HwMEREkrfvBWE/HawmhCZw/4Xxg8C6oN06+gYbGopRFZEWNLnhZnNvCoy1k9ywbO7J98K4lTdXY8soJAKacl0JKbvTg57KYeOrWBdyxIgeAX394gh+++hndjkF2yFOU3mV4tf2X4TXb7Dz6gf7auksmEx9hgfpT8KeLoWQrhETCl1+BRXcMe38zzr8IRTFQfqyAhooz/d7rm//kT67d8EoODyxAJUj+kxBCCCGEEGIckQLUOOBsaaHmN48BkHDXXZgSEsZ4Rr65YfINALxz6h26nd3u152q0737nYSPC+gNIz++swqnfWCx6PiuKqqLWjBbjCy9bqLHcxkNCj+9cjo/v3YmRoPCa/vPcOufd9Fk6x44OHHwAtRvN5yg0WZncnIEXzkvC0q26zvdNZyC6Az4+geQd7FX9xYRF09OT75T3y6ojrZWKo7r1/VX/pNL1ox4FAXqy9tobejE3uWksVoPZ5cleEIIIYQQQojxRApQ40DdH/6Is6GBkNxc4m758lhPx2fL0paRFJZEY1cjm8o2uV/fVbmLyvZKIkMiuTjTuw/x4vMtc0Yc4dEhdLbZKfqsrt973R0Otr+hL+NceEU24dHeLVW79bws/vK1RURYTOwqauC6P26nqO6sJX5JPTvh1fTuhHesqoXnd5YAcN9VMzDnvwLPXQ0djZA2H+74GJJn+HR/sy5cC8CRzRtxOuwAFB/aj6apJGRkEZWQ5NP5hmONMJOco3eJleTXU3emDTQIiw7x+vsnhBBCCCGEEMEgBagx1nXyJA0vvghA8r33ooSEjPGMfGcymLh20rVA/2V4rvDxK3OvxGqyjsXUxDhjMBqYuqwnjHxb/2V4e94vpqOlm5jkMOZcmOHTec+fnMhr315GekwoRXXtXPfHbew63bss7ewOKE3TeODtIzhVjctmJLO89Cl445ug2mHa1fC19yAy2ef7y523kPDYOGzNTZzepy+7K+rJf8qZ79/ldy6u3fBK8uv75D9J95MQQgghhBBifJEC1BjSNI3qhx4Ch4OIiy4iYsXysZ7SiF03SQ8Y31Gxg/K2cho6G9hYthGAG/JuGMupiXFm2jJ9GV7Z0QZa6joAaKxq57OPywBY8cU8jCbf/2iakhLJG3ctY05GDE02O1/58y5e29eTxeTqgGo4DfZO/pVfxY7T9USaHPza+HvY/Cv9/RU/gC8+ByFhI7o3g9HIjPMvAuDwxg9QVSdFh/YDenEqEFy5WmeONVDVsxteouQ/CSGEEEIIIcYZ01hP4N+N5nRi27sPR20t3aWltG/fgRISQvJP7h7rqY3KhMgJnJd6Hjsrd/KHg39AVVUcqoPpcdOZEjdlrKcnxpHoxFAmTI3lzLFGdr17mqzp8Rz6uAxV1cieFe8O1h6JpEgrL33jPP771YO8f7iK/371ECX17fzg4jywRKF0tXD4tYd560QMCSTxduyThJ/4DAwmuPK3MP+ro76/masvYfebr1J0cB87/vkPOltbMFutpEyaPOpzDyY+PYLwmBDam7o5ubcagIQJsgOeEEIIIYQQYnyRAlQQtXz4IdUPPYyjqqrf6+EXnE9Ihm9LjsajybGT2Vm5k3dOveN+raytjA0lG7g4SzKgRK/49AjOHGvkxM5qTuysdr+eMWPkxSeX0BAjv795Po/GH+eJT07xvxtP4ix4m+912QgBZh17nKcAh8WAqVUFazTc+Dzknj/qawPEpqQRn5FFfVkJO197CQB7Zyd//q87ufBrd5K3ZJlfruNy+mAtXTYHAJqmv7b5pROgwMR5/s2cEkIIIYQQQoiRkiV4QdLy4YeUf+/7A4pPAG0ffUTLhx8OctS5Y0PJBv525G8DXm/tbmXdJ+vYULJhDGYlxqNTB2o41LPc7mxbXjrBqQM1o76GwaBw96VT+dUNs7nMuJv/bvoFZs3Rb4xJUdE0ODLlu34rPgEU7tpOfVnJgNfbGup4+7GHKNy13W/XOnWghvVP5ePo7r+joK2lm/VP5fvleymEEEIIIYQQ/iAFqCDQnE6qH3q4tz1hAIXqhx5GczqDOi9/capOHtn9iMcxv9z9S5zquXl/wn9UVWPLy4Uex2x9pRBVHep3xTc3zEvlPvPzACjKwPc1IO7QkzgdjoFvjoCqOtn47NMex2x67mlUP/wuBPt7KYQQQgghhBCjIQWoILDt3Tdo55ObpuGoqsK2d1/wJuVH+2v2U22rHvJ9DY0qWxX7a/YHcVZiPKosbKK9qcvjmLbGLioLm/xyvWO7PiCFegyDFJ8ADAqkUM+xXR/45XrlRwtoa6jzOKa1vo7yowWjvlawv5dCCCGEEEIIMRpSgAoCR22tX8eNN7U27+bt7Tjx+dXe4rlg4uu44XQ0lvt13HDamhr9Os6TYH8vhRBCCCGEEGI0pAAVBKbERL+OG28Sw7ybt7fjxOdXeJTFr+OGExqb7tdxw4mIifXrOE+C/b0UQgghhBBCiNGQAlQQhC1cgCklZfAQGgBFwZSSQtjCBcGdmJ/MT5pPclgyCoPfn4JCSlgK85PmB3lmYrxJzYshPMZzQSQi1kJqXoxfrjd1yVqqiWeoGCRVgyrimbpkrV+ulz5tBhFxCR7HRMYnkD5txqivFezvpRBCCCGEEEKMhhSggkAxGkm+956eL84q0vR8nXzvPShGY5Bn5h9Gg5GfLP4JwIAilOvruxffjdFwbt6f8B+DQWHlTXkex6y4MQ/DUKFNPjKaTFQsvQ9gQBHK9XXl0vswmkx+uZ7BYOTCr93pcczq2+7E4IffhWB/L4UQQgghhBBiNKQAFSRRa9aQ/rvHMSUn93vdlJxM+u8eJ2rNmjGamX9cnHUxj13wGElhSf1eTw5L5rELHuPirIvHaGZivJk4L4lLvzlzQPdORKyFS785k4nzkoY4cmTmrb2NQ8v+l1olvt/rNUo8h5b9L/PW3ubX6+UtWcbV6+4d0AkVGZ/A1evuJW/JMr9dK9jfSyGEEEIIIYQYKUXTtM/1Ht0tLS1ER0fT3NxMVFTUWE8HzenUd8WrrcWUmEjYwgXnbOfTYJyqk/01+6m11ZIYlsj8pPnS+SQGpaqavpNbSxfhUfpSsUB26zgdDo7t+oCOxnJCY9OZumSt3zqfBqOqTn1XvKZGImJiSZ82wy+dT4NfK7jfSyGEEEKMvfH2OUcIIYYjBSghhBBCCCGEOMfI5xwhxLlGluAJIYQQQgghhBBCiICSApQQQgghhBBCCCGECCgpQAkhhBBCCCGEEEKIgJIClBBCCCGEEEIIIYQIKClACSGEEEIIIYQQQoiAkgKUEEIIIYQQQgghhAgoKUAJIYQQQgghhBBCiICSApQQQgghhBBCCCGECCgpQAkhhBBCCCGEEEKIgJIClBBCCCGEEEIIIYQIKClACSGEEEIIIYQQQoiAkgKUEEIIIYQQQgghhAioc6IA9Yc//IHs7GysVitLlixh9+7dYz0lIYQQQgghhBBCCOGlcV+Aevnll1m3bh333Xcf+/fvZ86cOaxdu5aampqxnpoQQgghhBBCCCGE8MK4L0A99thjfOMb3+D2229n+vTpPPnkk4SFhfGXv/xlrKcmhBBCCCGEEEIIIbxgGusJeNLd3c2+ffu455573K8ZDAYuvvhiduzYMegxXV1ddHV1ub9uaWkBwG63Y7fbAzthIYQQQgghhAgC+WwjhDjXjOsCVF1dHU6nk+Tk5H6vJycnc+zYsUGPefjhh3nggQcGvP7hhx8SFhYWkHkKIYQQQgghRDDZbLaxnoIQQvhkXBegRuKee+5h3bp17q9bWlrIyMhgzZo1REVFjeHMhBBCCCGEEMI/XCs9hBDiXDGuC1AJCQkYjUaqq6v7vV5dXU1KSsqgx1gsFiwWy4DXzWYzZrM5IPMUQgghhBBCiGCSzzZCiHPNuA4hDwkJYcGCBXz88cfu11RV5eOPP2bp0qVjODMhhBBCCCGEEEII4a1x3QEFsG7dOm677TYWLlzI4sWLefzxx2lvb+f2228f66kJIYQQQgghhBBCCC+M+wLUTTfdRG1tLT/72c+oqqpi7ty5rF+/fkAwuRBCCCGEEEIIIYQYnxRN07SxnkQgtbS0EB0dTXNzs4SQCyGEEEIIIT4X5HOOEOJcM64zoIQQQgghhBBCCCHEuW/cL8EbLVeDl2xTKoQQQgghhPi8cH2++ZwvaBFCfI587gtQra2tAGRkZIzxTIQQQgghhBDCv1pbW4mOjh7raQghxLA+9xlQqqpSUVFBZGQkiqKM9XREALS0tJCRkUFZWZmsfxceybMivCXPivCWPCvCW/KsCG95+6xomkZraytpaWkYDJKsIoQY/z73HVAGg4EJEyaM9TREEERFRclf6IRX5FkR3pJnRXhLnhXhLXlWhLe8eVak80kIcS6RUrkQQgghhBBCCCGECCgpQAkhhBBCCCGEEEKIgJIClDjnWSwW7rvvPiwWy1hPRYxz8qwIb8mzIrwlz4rwljwrwlvyrAghPq8+9yHkQgghhBBCCCGEEGJsSQeUEEIIIYQQQgghhAgoKUAJIYQQQgghhBBCiICSApQQQgghhBBCCCGECCgpQIkx9/DDD7No0SIiIyNJSkri2muv5fjx4/3GdHZ2ctdddxEfH09ERAQ33HAD1dXV/caUlpZyxRVXEBYWRlJSEj/60Y9wOBz9xnzyySfMnz8fi8XCpEmTePbZZwN9e8KPgvWsfPLJJyiKMuCfqqqqoNynGD1/PSv/9V//xYIFC7BYLMydO3fQa3322WesXLkSq9VKRkYGv/rVrwJ1WyIAgvWsFBcXD/rnys6dOwN5e8KP/PGsHDp0iJtvvpmMjAxCQ0OZNm0av/vd7wZcS/6+cm4L1rMif18RQpxrpAAlxtynn37KXXfdxc6dO/noo4+w2+2sWbOG9vZ295gf/OAHvPPOO7z66qt8+umnVFRUcP3117vfdzqdXHHFFXR3d7N9+3aee+45nn32WX72s5+5xxQVFXHFFVewevVqDh48yPe//33uuOMOPvjgg6Derxi5YD0rLsePH6eystL9T1JSUlDuU4yeP54Vl//4j//gpptuGvQ6LS0trFmzhqysLPbt28ejjz7K/fffz9NPPx2wexP+FaxnxWXDhg39/lxZsGCB3+9JBIY/npV9+/aRlJTECy+8QEFBAf/zP//DPffcw+9//3v3GPn7yrkvWM+Ki/x9RQhxztCEGGdqamo0QPv00081TdO0pqYmzWw2a6+++qp7zNGjRzVA27Fjh6Zpmvb+++9rBoNBq6qqco954okntKioKK2rq0vTNE378Y9/rM2YMaPftW666SZt7dq1gb4lESCBelY2bdqkAVpjY2PwbkYE1Eielb7uu+8+bc6cOQNe/+Mf/6jFxsa6nx1N07S7775bmzJliv9vQgRFoJ6VoqIiDdAOHDgQqKmLIBvts+Lyne98R1u9erX7a/n7yudPoJ4V+fuKEOJcIx1QYtxpbm4GIC4uDtD/HyC73c7FF1/sHjN16lQyMzPZsWMHADt27GDWrFkkJye7x6xdu5aWlhYKCgrcY/qewzXGdQ5x7gnUs+Iyd+5cUlNTueSSS9i2bVugb0cE0EieFW/s2LGDVatWERIS4n5t7dq1HD9+nMbGRj/NXgRToJ4Vl6uvvpqkpCRWrFjB22+/7Z9JizHhr2elubnZfQ6Qv698HgXqWXGRv68IIc4VUoAS44qqqnz/+99n+fLlzJw5E4CqqipCQkKIiYnpNzY5Odm9xr2qqqpfQcH1vus9T2NaWlro6OgIxO2IAArks5KamsqTTz7Ja6+9xmuvvUZGRgYXXHAB+/fvD/BdiUAY6bPiDW+eJ3HuCOSzEhERwW9+8xteffVV3nvvPVasWMG1114rRahzlL+ele3bt/Pyyy9z5513ul+Tv698vgTyWZG/rwghzjWmsZ6AEH3ddddd5Ofns3Xr1rGeihjnAvmsTJkyhSlTpri/XrZsGadOneK3v/0tzz//vN+vJwJL/lwR3grks5KQkMC6devcXy9atIiKigoeffRRrr76ar9fTwSWP56V/Px8rrnmGu677z7WrFnjx9mJ8SSQz4r8fUUIca6RDigxbnz3u9/l3XffZdOmTUyYMMH9ekpKCt3d3TQ1NfUbX11dTUpKinvM2TsSub4ebkxUVBShoaH+vh0RQIF+VgazePFiTp486ac7EMEymmfFGyN9nsT4E+hnZTBLliyRP1fOQf54Vo4cOcJFF13EnXfeyU9/+tN+78nfVz4/Av2sDEb+viKEGM+kACXGnKZpfPe73+WNN95g48aN5OTk9Ht/wYIFmM1mPv74Y/drx48fp7S0lKVLlwKwdOlSDh8+TE1NjXvMRx99RFRUFNOnT3eP6XsO1xjXOcT4F6xnZTAHDx4kNTXVz3ckAsUfz4o3li5dyubNm7Hb7e7XPvroI6ZMmUJsbOzob0QEXLCelcHInyvnFn89KwUFBaxevZrbbruNBx98cMB15O8r575gPSuDkT9XhBDj2lgmoAuhaZr27W9/W4uOjtY++eQTrbKy0v2PzWZzj/nWt76lZWZmahs3btT27t2rLV26VFu6dKn7fYfDoc2cOVNbs2aNdvDgQW39+vVaYmKids8997jHnD59WgsLC9N+9KMfaUePHtX+8Ic/aEajUVu/fn1Q71eMXLCeld/+9rfam2++qRUWFmqHDx/Wvve972kGg0HbsGFDUO9XjJw/nhVN07TCwkLtwIED2je/+U1t8uTJ2oEDB7QDBw64d71ramrSkpOTtVtvvVXLz8/XXnrpJS0sLEx76qmngnq/YuSC9aw8++yz2t///nft6NGj2tGjR7UHH3xQMxgM2l/+8peg3q8YOX88K4cPH9YSExO1r3zlK/3OUVNT4x4jf1859wXrWZG/rwghzjVSgBJjDhj0n7/+9a/uMR0dHdp3vvMdLTY2VgsLC9Ouu+46rbKyst95iouLtcsuu0wLDQ3VEhIStP/+7//W7HZ7vzGbNm3S5s6dq4WEhGi5ubn9riHGv2A9K7/85S+1iRMnalarVYuLi9MuuOACbePGjcG6TeEH/npWzj///EHPU1RU5B5z6NAhbcWKFZrFYtHS09O1Rx55JEh3KfwhWM/Ks88+q02bNk0LCwvToqKitMWLF/fbgl2Mf/54Vu67775Bz5GVldXvWvL3lXNbsJ4V+fuKEOJco2iapvmvn0oIIYQQQgghhBBCiP4kA0oIIYQQQgghhBBCBJQUoIQQQgghhBBCCCFEQEkBSgghhBBCCCGEEEIElBSghBBCCCGEEEIIIURASQFKCCGEEEIIIYQQQgSUFKCEEEIIIYQQQgghREBJAUoIIYQQQgghhBBCBJQUoIQQQgghhBBCCCFEQEkBSgghhBBCCCGEEEIElBSghBBCiLNomsbFF1/M2rVrB7z3xz/+kZiYGM6cOTMGMxNCCCGEEOLcJAUoIYQQ4iyKovDXv/6VXbt28dRTT7lfLyoq4sc//jH/93//x4QJE/x6Tbvd7tfzCSGEEEIIMZ5IAUoIIYQYREZGBr/73e/44Q9/SFFREZqm8fWvf501a9Ywb948LrvsMiIiIkhOTubWW2+lrq7Ofez69etZsWIFMTExxMfHc+WVV3Lq1Cn3+8XFxSiKwssvv8z555+P1WrlxRdfHIvbFEIIIYQQIigUTdO0sZ6EEEIIMV5de+21NDc3c/311/Pzn/+cgoICZsyYwR133MFXv/pVOjo6uPvuu3E4HGzcuBGA1157DUVRmD17Nm1tbfzsZz+juLiYgwcPYjAYKC4uJicnh+zsbH7zm98wb948rFYrqampY3y3QgghhBBCBIYUoIQQQggPampqmDFjBg0NDbz22mvk5+ezZcsWPvjgA/eYM2fOkJGRwfHjx5k8efKAc9TV1ZGYmMjhw4eZOXOmuwD1+OOP873vfS+YtyOEEEIIIcSYkCV4QgghhAdJSUl885vfZNq0aVx77bUcOnSITZs2ERER4f5n6tSpAO5ldoWFhdx8883k5uYSFRVFdnY2AKWlpf3OvXDhwqDeixBCCCGEEGPFNNYTEEIIIcY7k8mEyaT/T2ZbWxtXXXUVv/zlLweMcy2hu+qqq8jKyuKZZ54hLS0NVVWZOXMm3d3d/caHh4cHfvJCCCGEEEKMA1KAEkIIIXwwf/58XnvtNbKzs91Fqb7q6+s5fvw4zzzzDCtXrgRg69atwZ6mEEIIIYQQ44oswRNCCCF8cNddd9HQ0MDNN9/Mnj17OHXqFB988AG33347TqeT2NhY4uPjefrppzl58iQbN25k3bp1Yz1tIYQQQgghxpQUoIQQQggfpKWlsW3bNpxOJ2vWrGHWrFl8//vfJyYmBoPBgMFg4KWXXmLfvn3MnDmTH/zgBzz66KNjPW0hhBBCCCHGlOyCJ4QQQgghhBBCCCECSjqghBBCCCGEEEIIIURASQFKCCGEEEIIIYQQQgSUFKCEEEIIIYQQQgghREBJAUoIIYQQQgghhBBCBJQUoIQQQgghhBBCCCFEQEkBSgghhBBCCCGEEEIElBSghBBCCCGEEEIIIURASQFKCCGEEEIIIYQQQgSUFKCEEEIIIYQQQgghREBJAUoIIYQQQgghhBBCBJQUoIQQQgghhBBCCCFEQEkBSgghhBBCCCGEEEIE1P8PquyKQf0oFs8AAAAASUVORK5CYII=\n"
          },
          "metadata": {}
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [
        "sdf.chat(\"Return info about this dataset together with the counts of duplicates and missing values\")"
      ],
      "metadata": {
        "colab": {
          "base_uri": "https://localhost:8080/",
          "height": 740
        },
        "id": "FJAwWR9ppP0P",
        "outputId": "a6d420c3-cde3-4456-bbb9-89e2e0872275"
      },
      "execution_count": null,
      "outputs": [
        {
          "output_type": "stream",
          "name": "stdout",
          "text": [
            "<class 'pandas.core.frame.DataFrame'>\n",
            "RangeIndex: 388401 entries, 0 to 388400\n",
            "Data columns (total 31 columns):\n",
            " #   Column              Non-Null Count   Dtype         \n",
            "---  ------              --------------   -----         \n",
            " 0   event_id_cnty       388401 non-null  object        \n",
            " 1   event_date          388401 non-null  datetime64[ns]\n",
            " 2   year                388401 non-null  int64         \n",
            " 3   time_precision      388401 non-null  int64         \n",
            " 4   disorder_type       388401 non-null  object        \n",
            " 5   event_type          388401 non-null  object        \n",
            " 6   sub_event_type      388401 non-null  object        \n",
            " 7   actor1              388401 non-null  object        \n",
            " 8   assoc_actor_1       105320 non-null  object        \n",
            " 9   inter1              388401 non-null  object        \n",
            " 10  actor2              282484 non-null  object        \n",
            " 11  assoc_actor_2       77312 non-null   object        \n",
            " 12  inter2              282484 non-null  object        \n",
            " 13  interaction         388401 non-null  object        \n",
            " 14  civilian_targeting  115195 non-null  object        \n",
            " 15  iso                 388401 non-null  int64         \n",
            " 16  region              388401 non-null  object        \n",
            " 17  country             388401 non-null  object        \n",
            " 18  admin1              388389 non-null  object        \n",
            " 19  admin2              384801 non-null  object        \n",
            " 20  admin3              194547 non-null  object        \n",
            " 21  location            388401 non-null  object        \n",
            " 22  latitude            388401 non-null  float64       \n",
            " 23  longitude           388401 non-null  float64       \n",
            " 24  geo_precision       388401 non-null  int64         \n",
            " 25  source              388401 non-null  object        \n",
            " 26  source_scale        388401 non-null  object        \n",
            " 27  notes               388401 non-null  object        \n",
            " 28  fatalities          388401 non-null  int64         \n",
            " 29  tags                87785 non-null   object        \n",
            " 30  timestamp           388401 non-null  int64         \n",
            "dtypes: datetime64[ns](1), float64(2), int64(6), object(22)\n",
            "memory usage: 91.9+ MB\n"
          ]
        },
        {
          "output_type": "execute_result",
          "data": {
            "text/plain": [
              "          shape  info  duplicates_count  missing_values_count\n",
              "0  (388401, 31)  None                 0               1577292"
            ],
            "text/html": [
              "\n",
              "  <div id=\"df-aef652ae-d703-46a5-9b96-c632887ac7e7\" class=\"colab-df-container\">\n",
              "    <div>\n",
              "<style scoped>\n",
              "    .dataframe tbody tr th:only-of-type {\n",
              "        vertical-align: middle;\n",
              "    }\n",
              "\n",
              "    .dataframe tbody tr th {\n",
              "        vertical-align: top;\n",
              "    }\n",
              "\n",
              "    .dataframe thead th {\n",
              "        text-align: right;\n",
              "    }\n",
              "</style>\n",
              "<table border=\"1\" class=\"dataframe\">\n",
              "  <thead>\n",
              "    <tr style=\"text-align: right;\">\n",
              "      <th></th>\n",
              "      <th>shape</th>\n",
              "      <th>info</th>\n",
              "      <th>duplicates_count</th>\n",
              "      <th>missing_values_count</th>\n",
              "    </tr>\n",
              "  </thead>\n",
              "  <tbody>\n",
              "    <tr>\n",
              "      <th>0</th>\n",
              "      <td>(388401, 31)</td>\n",
              "      <td>None</td>\n",
              "      <td>0</td>\n",
              "      <td>1577292</td>\n",
              "    </tr>\n",
              "  </tbody>\n",
              "</table>\n",
              "</div>\n",
              "    <div class=\"colab-df-buttons\">\n",
              "\n",
              "  <div class=\"colab-df-container\">\n",
              "    <button class=\"colab-df-convert\" onclick=\"convertToInteractive('df-aef652ae-d703-46a5-9b96-c632887ac7e7')\"\n",
              "            title=\"Convert this dataframe to an interactive table.\"\n",
              "            style=\"display:none;\">\n",
              "\n",
              "  <svg xmlns=\"http://www.w3.org/2000/svg\" height=\"24px\" viewBox=\"0 -960 960 960\">\n",
              "    <path d=\"M120-120v-720h720v720H120Zm60-500h600v-160H180v160Zm220 220h160v-160H400v160Zm0 220h160v-160H400v160ZM180-400h160v-160H180v160Zm440 0h160v-160H620v160ZM180-180h160v-160H180v160Zm440 0h160v-160H620v160Z\"/>\n",
              "  </svg>\n",
              "    </button>\n",
              "\n",
              "  <style>\n",
              "    .colab-df-container {\n",
              "      display:flex;\n",
              "      gap: 12px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert {\n",
              "      background-color: #E8F0FE;\n",
              "      border: none;\n",
              "      border-radius: 50%;\n",
              "      cursor: pointer;\n",
              "      display: none;\n",
              "      fill: #1967D2;\n",
              "      height: 32px;\n",
              "      padding: 0 0 0 0;\n",
              "      width: 32px;\n",
              "    }\n",
              "\n",
              "    .colab-df-convert:hover {\n",
              "      background-color: #E2EBFA;\n",
              "      box-shadow: 0px 1px 2px rgba(60, 64, 67, 0.3), 0px 1px 3px 1px rgba(60, 64, 67, 0.15);\n",
              "      fill: #174EA6;\n",
              "    }\n",
              "\n",
              "    .colab-df-buttons div {\n",
              "      margin-bottom: 4px;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert {\n",
              "      background-color: #3B4455;\n",
              "      fill: #D2E3FC;\n",
              "    }\n",
              "\n",
              "    [theme=dark] .colab-df-convert:hover {\n",
              "      background-color: #434B5C;\n",
              "      box-shadow: 0px 1px 3px 1px rgba(0, 0, 0, 0.15);\n",
              "      filter: drop-shadow(0px 1px 2px rgba(0, 0, 0, 0.3));\n",
              "      fill: #FFFFFF;\n",
              "    }\n",
              "  </style>\n",
              "\n",
              "    <script>\n",
              "      const buttonEl =\n",
              "        document.querySelector('#df-aef652ae-d703-46a5-9b96-c632887ac7e7 button.colab-df-convert');\n",
              "      buttonEl.style.display =\n",
              "        google.colab.kernel.accessAllowed ? 'block' : 'none';\n",
              "\n",
              "      async function convertToInteractive(key) {\n",
              "        const element = document.querySelector('#df-aef652ae-d703-46a5-9b96-c632887ac7e7');\n",
              "        const dataTable =\n",
              "          await google.colab.kernel.invokeFunction('convertToInteractive',\n",
              "                                                    [key], {});\n",
              "        if (!dataTable) return;\n",
              "\n",
              "        const docLinkHtml = 'Like what you see? Visit the ' +\n",
              "          '<a target=\"_blank\" href=https://colab.research.google.com/notebooks/data_table.ipynb>data table notebook</a>'\n",
              "          + ' to learn more about interactive tables.';\n",
              "        element.innerHTML = '';\n",
              "        dataTable['output_type'] = 'display_data';\n",
              "        await google.colab.output.renderOutput(dataTable, element);\n",
              "        const docLink = document.createElement('div');\n",
              "        docLink.innerHTML = docLinkHtml;\n",
              "        element.appendChild(docLink);\n",
              "      }\n",
              "    </script>\n",
              "  </div>\n",
              "\n",
              "\n",
              "    </div>\n",
              "  </div>\n"
            ],
            "application/vnd.google.colaboratory.intrinsic+json": {
              "type": "dataframe",
              "repr_error": "Out of range float values are not JSON compliant: nan"
            }
          },
          "metadata": {},
          "execution_count": 25
        }
      ]
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "1_g6yaruzFNb"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "9HSlOtkrpP_M"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "fd10ctWwfjtB"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "V6QcaOfJfjwj"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "_Ygrqlnofj0f"
      },
      "execution_count": null,
      "outputs": []
    },
    {
      "cell_type": "code",
      "source": [],
      "metadata": {
        "id": "pxW5eOQ4fj5d"
      },
      "execution_count": null,
      "outputs": []
    }
  ]
}